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PRIORITIZATION OF ALTERNATIVES IN WASTE MANAGEMENT: A CASE IN PERNAMBUCO STATE, BRAZIL

ABSTRACT

Waste sorting is a core element for adding value to the recycling chain. Exploring and prioritizing alternatives regarding its expansion and improvement is very challenging. This study proposes a multi-methodological approach through the integration of a Problem Structuring Method (PSM) and a multicriteria method (MCDA/M) to support decision-making in the solid waste management context. The developed model uses Soft Systems Methodology (SSM) in the problem structuring stage to explore the problematic situation and identify alternatives. Preference modeling was conducted in a flexible and interactive manner, aided by FITradeoff method to rank the identified alternatives and obtain a recommendation. The proposed model was developed for a real case study in Brazil. In the elicitation process, the decision maker answered 9 questions to obtain the ordering of alternatives. This work seeks to enrich the literature proposing the successful application of an innovative model in the waste management context, especially regarding waste sorting.

Keywords:
soft systems methodology; FITradeoff; solid waste management; waste sorting; multimethodologies

1 INTRODUCTION

Municipal Solid Waste Management (MSWM) is a worldwide challenge. Within the scope of a circular economy, the recycling chain seeks to keep materials and products in circulation for as long possible (EPA, 2023EPA. 2023. United States Environmental Protection Agency. Available at: https://www.epa.gov/.
https://www.epa.gov/...
). Waste sorting is considered a key element in annihilating the challenges of solid waste generation, promoting a circular economy and environmental sustainability (Adu-Gyamfi et al., 2023ADU-GYAMFI G, ASAMOAH A, NKETIAH E, OBUOBI B, ADJEI M, CUDJOE D & ZHU B. 2023. Reducing waste management challenges: empirical assessment of waste sorting intention among corporate employees in Ghana. J. Retailing Con. Serv, 72: 103261.). Developing effective waste sorting actions is the main issue, as it may involve community awareness and participation, government commitment, transportation costs, public and private sector integration, operations efficiency, waste pickers, the recycling industry, among others. How to relate all these aspects in a systemic manner is crucial to obtain successful waste sorting practices, which becomes even challenging when it comes to developing countries (Fernando & Zutshi, 2023FERNANDO S & ZUTSHI A. 2023. Municipal solid waste management in developing economies: A way forward. Cleaner Waste Systems, 6: 100103.).

In 2022, Brazil generated approximately 81.8 million tons of MSW which represents around 224,000 tons per day. As a result, each Brazilian generated, on average, 1.043 kg of waste per day. Of this amount, about 93% was collected, around 76.1 million tons (ABRELPE, 2023ABRELPE. 2023. Brazilian Association of Public Cleaning and Special Waste Companies. Available at: https://abrelpe.org.br/panorama/.
https://abrelpe.org.br/panorama/...
). A significant amount of this MSW generated is inappropriately disposed of in controlled landfills and dumpsites (about 39,5%). One way to reduce the volume of MSW disposed of in these areas or even in proper landfills is through waste sorting.

Waste sorting is a specific collection of dry solid waste (paper, plastic, metal, glass and organic). The recyclable material, separated at the generating source, is collected through a special (sorting) collection, which must be implemented by the service holder (municipal manager) according to the Brazilian law (BRAZIL, 2022BRAZIL. 2022. Brazilian National Solid Waste Policy Law. Available at: http://www.planalto.gov.br/ccivil_03/_ato2007-2010/2010/lei/l12305.htm.
http://www.planalto.gov.br/ccivil_03/_at...
). Collection can be performed door-to-door, at voluntary drop-off points, or in other ways (SNIS, 2021SNIS. 2021. National Sanitation Information System.).

Separation of recyclable materials plays a strategic role in integrated solid waste management, providing several social, environmental, and economic benefits: it encourages the habit of separating waste at the source for its use; promotes environmental education aimed at reducing consumption; generates jobs and income for low-income people; reduces the need for raw material extracted from nature; improves the quality of organic material for composting; as well as extends the useful life of landfills.

According to the Brazilian National Solid Waste Policy (NSWP) (Law nº 12.305/10), responsibilities for MSWM are assigned to the municipalities. However, waste sorting services may be operated by the municipality itself or by outsourced companies or associations/cooperatives of waste pickers in partnership with the municipality. In 2022, the number of municipalities that presented some waste sorting practice was 4,183, representing 75.1% of the total municipalities in Brazil (ABRELPE, 2023ABRELPE. 2023. Brazilian Association of Public Cleaning and Special Waste Companies. Available at: https://abrelpe.org.br/panorama/.
https://abrelpe.org.br/panorama/...
).

It is important to note, however, that in most municipalities, waste sorting activities still do not cover the entire population, and may be one-off initiatives. Despite Brazil having a National Solid Waste Policy since 2010, this country recycles only 2.8% of the total collected waste (SNIS, 2021SNIS. 2021. National Sanitation Information System.). The South and Southeast regions have the highest percentages of municipalities with waste sorting initiatives; both surpass 90% of municipalities with some waste sorting practices.

On the other hand, in the Northeast region, the second largest solid waste generator in this country, around 57,7% of the municipalities do not have any waste sorting practice. Recife, the capital and largest city of Pernambuco State, however, has a waste sorting program since 2016, known as “EcoRecife”. This project promotes the improvement and preservation of the environment and also generates jobs and income for waste pickers, who play a fundamental role in the process of correct waste disposal, as they separate all the material and provide what is useful to the recycling industry (Recife, 2023RECIFE. 2023. Recife City Hall. EcoRecife Project. Available at: http://ecorecife.recife.pe.gov.br/coleta-seletiva.
http://ecorecife.recife.pe.gov.br/coleta...
). Nevertheless, it is important to highlight that this waste sorting program does not cover the entirety of Recife’s urban area, nor the potential for achievable collected volume (in terms of what is produced). Thus, according to what was previously discussed, this project faces challenges in expanding and improving its operational practices to enlarge the waste sorting services due to lack of holistic comprehension of the problem, managerial limitations, and necessity of identifying alternative courses of action.

Problems of this nature are common in solid waste management, as they normally involve multiple stakeholders, who have different interests, perspectives and roles regarding the issue. The process of exploring and understanding this type of problematics can be supported by formal methodologies that guide them in a structured and systematic way. These approaches are known as Problem Structuring Methods (PSMs). One of the most prominent found in the literature is Soft Systems Methodology (SSM). It is an action-oriented process of inquiry into problematic situations in which users learn their way from finding out about the situation, to taking action to improve it (Checkland & Poulter, 2020CHECKLAND P & POULTER J. 2020. Soft Systems Methodology. Chapter, 5: 201-253.).

On the other hand, the set of alternatives found should be explored and possibly taken according to the limited resources and different objectives faced (technical, economic, environmental or social) in the decision context, where some kind of prioritization is needed. MCDA/M can be very useful to carry out a rational ordering of these alternatives considering different attributes of the problem to ultimately support managers to make better decisions (Trojan & Morais, 2015TROJAN F & MORAIS DC. 2015. Maintenance Management Decision Model for Reduction of Losses in Water Distribution Networks. Water Resour Manage, 29: 3459-3479.). According to Garcia-Garcia (2022GARCIA-GARCIA G. 2022. Using Multi-Criteria Decision-Making to optimise solid waste management. Curr. Opin. Green Sustain. Chem, 37: 100650.), MCDA/M has been widely used to support solid waste management.

Therefore, this paper proposes a multimethodological intervention to aid decision-making in MSWM. Firstly, a Problem Structuring Method known as Soft Systems Methodology (SSM) is applied to guide the process of structuring the problem associated with the expansion and improvement of waste sorting policies in one of the largest cities in Brazil. This stage aims to aid the decision maker (DM) to obtain a deeper understanding of the problem and for the identification of alternatives that will support in such decision-making process. Secondly, the multicriteria method FITradeoff (Flexible and Interactive Tradeoff) will be applied for the prioritization of alternatives obtained from the structuring stage in order to propose a recommendation.

This paper is organized as follows. Section 2 presents a literature review on the development of multimethodologies to support decision making specifying the use of Problem Structuring Methods and Multi-Criteria Decision Analysis (MCDA/M) in the solid waste management context; in section 3, we propose an integrated model to support municipal managers in MSWM; section 4 shows the application of such model in a real case study of waste sorting in one of the largest cities in Brazil; finally, section 5 presents the final remarks of this paper.

2 MULTIMETHODOLOGIES TO SUPPORT DECISION MAKING

A multimethodology is the combination of different techniques to assist in decision making, and it is something that has been widely studied in the field of Operations Research (OR) (Georgiou, 2012GEORGIOU I. 2012. Messing about in transformations: Structured systemic planning for systemic solutions to systemic problems. European Journal of Operational Research, 223(2): 392-406.). A methodological intervention can be applied from several ways (Kotiadis & Mingers, 2014KOTIADIS K & MINGERS J. 2014. Combining problem structuring methods with simulation: The philosophical and practical challenges. Discrete-Event Simulation and System Dynamics for Management Decision Making, 52-75.). For instance, multimethodologies can be developed through integrations between different Problem Structuring Methods (PSMs) (Georgiou, 2012GEORGIOU I. 2012. Messing about in transformations: Structured systemic planning for systemic solutions to systemic problems. European Journal of Operational Research, 223(2): 392-406.); between PSMs and quantitative/hard approaches (Cambrainha & Fontana, 2018CAMBRAINHA G & FONTANA M. 2018. A multi-criteria decision making approach to balance water supply-demand strategies in water supply systems. Production, 28(0).; Medeiros et al., 2017MEDEIROS D, URTIGA MM & MORAIS D. 2017. Integrative negotiation model to support water resources management. Journal of Cleaner Production, 150: 148-163.); or even between different quantitative/hard techniques (SILVA et al., 2019SILVA M, HIPEL K, KILGOUR DM & COSTA A. 2019. Strategic Analysis of a Regulatory Conflict Using Dempster-Shafer Theory and AHP for Preference Elicitation. Journal of Systems Science and Systems Engineering.). In particular, the most common way of methodological interventions found in the literature is among PSMs and Multi-Criteria Decision Analysis (MCDA/M), which is also known as “Soft” and “Hard” OR integration. This is the type of intervention that we seek to delve further into in this research.

Structuring problems for MCDA/M has attracted increasing attention over the past 20 years from both a conceptual and a practical perspective. This is reflected in a significant growth in the number of published applications which use a formal approach to problem structuring combined with an analytic method for MCDA/M (Marttunen et al., 2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.). According to Marttunem et al. (2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.), there are different ways to combine PSMs and MCDA/M, as can be seen in Figure 1:

  1. Sequential: one or more PSMs inform the subsequent MCDA/M;

  2. Embedded: MCDA/M is embedded within a generic problem structuring process;

  3. Integrated implementation: the combination of PSMs and MCDA/M moves from a more independent consideration of the two perspectives to an integrated analysis.

Figure 1
Three different ways to combine PSMs with MCDA/M.

PSMs have evolved within Operations Research (OR) over the last 30 years in order to better deal with messy, wicked and complex problems that are not amenable to the traditional, largely quantitative, OR techniques (Kotiadis & Mingers, 2014KOTIADIS K & MINGERS J. 2014. Combining problem structuring methods with simulation: The philosophical and practical challenges. Discrete-Event Simulation and System Dynamics for Management Decision Making, 52-75.). The importance of PSMs is clearly recognized in the literature, as these approaches allow the evaluation of complex problems, paying special attention to the qualitative and subjective aspects of decision processes, seeking to learn and organize information about the problem (Mingers & Rosenhead, 2004MINGERS J & ROSENHEAD J. 2004. Problem structuring methods in action. European Journal of Operational Research, p. 530-554.; Cunha & Morais, 2017CUNHA A & MORAIS D. 2017. Problem structuring methods in group decision making: a comparative study of their application. Operational Research, v. 19: 1081-1100.). Furthermore, PSMs allow stakeholders identification, specifying objectives, defining associated criteria, and suggesting resolution options for these complex problems, in environments of uncertainty and conflict. These aspects reduce the risk of “solving the wrong problem” or recommending an inappropriate solution (Marttunen et al., 2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.).

The most prominent PSMs include Strategic Options Development and Analysis (SODA) (Ackermann & Eden, 2020ACKERMANN F & EDEN C. 2020. Strategic Options Development and Analysis. vol. 4. 2 ed. Milton Keynes, UK: Springer-Verlag London Ltd. Chapter. 139-199 pp.); Strategic Choice Approach (SCA) (Friend & Hickling, 2004FRIEND J & HICKLING A. 2004. Planning under pressure: The strategic choice approach. 3rd ed. Oxford: Elsevier.); Value-Focused Thinking (VFT) (keeney, 1992KEENEY R. 1992. Value focused thinking: A path to creative decision making. Cambridge, MA: Harvard University Press.); and Soft Systems Methodology (SSM) (Checkland & Poulter, 2020CHECKLAND P & POULTER J. 2020. Soft Systems Methodology. Chapter, 5: 201-253.) and all these techniques have been successfully applied in a multimethodological context (Marttunen et al., 2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.). According to Gomes Junior & Schramm (2022JÚNIOR AAG & SCHRAMM VB. 2021. Problem structuring methods: a review of advances over the last decade. Systemic Practice and Action Research.) and (Kotiadis & Mingers, 2014KOTIADIS K & MINGERS J. 2014. Combining problem structuring methods with simulation: The philosophical and practical challenges. Discrete-Event Simulation and System Dynamics for Management Decision Making, 52-75.), SSM is one of the most frequently used PSMs in the literature (by itself or combined with other methods), showing its applicability in different situations.

Soft Systems Methodology is an approach for tackling problematical, messy situations of all kinds. It is an action-oriented process of inquiry into problematic situations in which users learn their way from finding out about the situation, to taking action to improve it (Checkland & Poulter, 2020CHECKLAND P & POULTER J. 2020. Soft Systems Methodology. Chapter, 5: 201-253.). The learning emerges via an organized process in which the situation is explored using a set of models of purposeful action (each built to encapsulate a single worldview) as intellectual devices, or tools, to inform and structure discussion about a situation and how it might be improved.

As previously discussed, SSM has been used as part of multimethodological interventions in a large variety of problems, such as, water management (Gomes et al., 2015GOMES S, ANDRADE ALO & MORAIS D. 2015. Using Soft Systems Methodology on the Problem of Water Scarcity. In: 2015 IEEE International Conference on Systems, Man, and Cybernetics. p. 273-278. Hong Kong, China.); aircraft manufacturing (Abuabara et al., 2017ABUABARA L, PAUCAR-CACERES A, BELDERRAIN MCN & BURROWES-CROMWELL T. 2017. A systemic framework based on Soft OR approaches to support teamwork strategy: an aviation manufacturer Brazilian company case. Journal of the Operational Research Society.); environmental management (Marttunen et al., 2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.); energy management (Bernardo et al., 2018BERNARDO H, GASPAR A & ANTUNES C. 2018. A Combined Value Focused ThinkingSoft Systems Methodology Approach to Structure Decision Support for Energy Performance Assessment of School Buildings. Sustainability, 10(7): 2295.); technology management (Small & Wainwright, 2014SMALL A & WAINWRIGHT D. 2014. SSM and technology management: Developing multimethodology through practice. European Journal of Operational Research, 233(3): 660-673.); Healthcare (Crowe et al., 2017CROWE S, BROWN K, TREGAY J, WRAY J, KNOWLES R, RIDOUT D, BULL C & UTLEY M. 2017. Combining qualitative and quantitative operational research methods to inform quality improvement in pathways that span multiple settings. BMJ Quality & Safety, 26(8): 641-652.; Lamé et al., 2019LAMÉ G, JOUINI O & STAL-LE CARDINAL J. 2019. Combining Soft Systems Methodology, ethnographic observation, and discrete-event simulation: A case study in cancer care. Journal of the Operational Research Society, 71(10): 1545-1562.) among others (Marttunen et al., 2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.). However, there is a lack of applications of this method when it comes to solid waste management.

In their work, for instance, Sridan & Surapolchai (2003SRIDAN P & SURAPOLCHAI P. 2020. A systemic approach to integrated sustainable solid waste management through community engagement: A case study of Tan Deaw sub-district, Saraburi province. In: IOP Conference Series: Earth and Environmental Science.) combined SSM and Critical Systems Heuristic (CSH) in a qualitative analysis, for structuring the process of collecting perspectives from all stakeholders, exploring the key problems, and finding out strategies to address the critical solid waste management issues of Tan-Dean, a district of Thailand. On the other hand, Adamides et al. (2009ADAMIDES E, MITROPOULOS P, GIANNIKOS I & MITROPOULOS I. 2009. A multi-methodological approach to the development of a regional solid waste management system. Journal of the Operational Research Society, 60(6): 758-770.) present the combined application of SSM, system dynamics and multi-objective optimization in an action research project for the development of a Solid Waste Management (SWM) system for a specific region in Greece.

Even though SSM is commonly applied with MCDA/M methods in many contexts, to the best of the authors knowledge, there is no such intervention in solid waste management problems regarding waste sorting. Research about the implications and benefits of using PSMs to ease MDCA/M has become more and more common in the literature while the problem structuring phase receives increasingly attention in the decision-making process (Marttunen et al., 2017MARTTUNEN M, LIENERT J & BELTON V. 2017. Structuring problems for multi-criteria decision analysis in practice: a literature review of method combinations. European Journal of Operational Research, 263(1): 1-17.). Thus, this research aims to contribute to this gap in the literature presenting a multimethodological intervention in the context of solid waste management regarding waste sorting by using SSM and FITradeoff, an MDCA/M method that has been receiving increasingly attention in the literature due to its ease and applicability.

2.1 FITradeoff method

Among the large number of MCDA/M methods found in the literature, FITradeoff is a considerably new method which uses the flexible elicitation concept to improve the applicability of the traditional tradeoff elicitation procedure developed by Keeney (1992KEENEY R. 1992. Value focused thinking: A path to creative decision making. Cambridge, MA: Harvard University Press.). FITradeoff offers two main benefits: the information required from the DM is reduced and he/she does not need to make adjustments for the indifference between two consequences (trade-off), which is a critical issue in the traditional tradeoff procedure. Furthermore, it is easier for the DM to make comparisons of consequences (or outcomes) based on strict preference than on indifference (De Almeida et al., 2016ALMEIDA A, ALMEIDA J, COSTA A & ALMEIDA-FILHO A. 2016. A New Method for Elicitation of Criteria Weights in Additive Models: Flexible and Interactive Tradeoff. European Journal of Operational Research, 250(1): 179-191.). Hence, the partial information used in FITradeoff reduces the cognitive effort of the DM and can result in fewer inconsistencies in the elicitation process (Freaj et al., 2017FREJ E, ROSELLI L, ALMEIDA JA & ALMEIDA A. 2019. A Multicriteria Decision Model for Supplier Selection in a Food Industry Based on FITradeoff Method. Math Prob in Engi, 2017: 1-9.).

The flexibility of the FITradeoff Decision Support System (DSS) consists of systematically evaluating the possibility of finding a solution for the problem while the elicitation process is being conducted. This means that the elicitation procedure may be suspended as soon as a solution is found with the partial information obtained during this process. This partial information is based on preference (P) relations in order to find a solution, which in most cases can be achieved by using this partial information obtained from the DM up to that point, which is then applied to solve a linear programming problem (LPP) (De Almeida et al., 2016ALMEIDA A, ALMEIDA J, COSTA A & ALMEIDA-FILHO A. 2016. A New Method for Elicitation of Criteria Weights in Additive Models: Flexible and Interactive Tradeoff. European Journal of Operational Research, 250(1): 179-191.).

As previously discussed, the FITradeoff method is based on an interactive elicitation process, assuming partial information about the criteria weights representing the DM’s preferences. Assume a set S = (A 1 , A 2, . . . , A n ) of N alternatives, which are evaluated with respect to M criteria. In this method, the alternatives are scored using a value function based on the additive model within the context of multi-attribute value theory (MAVT):

V A i = j = 1 m w j v j A i (1)

where w j is the weight value of criterion j, and v j (A i ) is the value of the alternative A i for criterion j (Correia et al., 2021CORREIA L, SILVA J, LEITE W, LUCAS REC & COLAÇO G. 2021. A multicriteria decision model to rank workstations in a footwear industry based on a FITradeoff-ranking method for ergonomics interventions. Operational Research.). For further reading on how weights are calculated and the analytical process of FITradeoff we suggest (De Almeida et al., 2016ALMEIDA A, ALMEIDA J, COSTA A & ALMEIDA-FILHO A. 2016. A New Method for Elicitation of Criteria Weights in Additive Models: Flexible and Interactive Tradeoff. European Journal of Operational Research, 250(1): 179-191.).

This method allows a recommendation to be provided with fewer information from the DM if compared to other MCDA/M methods, once as previously said, it uses partial preferential information that act as input for mathematical programming models to find potentially optimal alternatives (POA), thus, reducing time and cognitive effort on the process for eliciting the DM’s preferences (Fossile et al., 2020FOSSILE D, FREJ E, COSTA S, LIMA E & ALMEIDA A. 2020. Selecting the most viable renewable energy source for Brazilian ports using the FITradeoff method. Journal of Cleaner Production, 260: 121107.).

Even though FITradeoff is a considerably new method, it has been increasingly used in the literature, including multimethodological interventions with PSMs. Correia et al. (2021CORREIA L, SILVA J, LEITE W, LUCAS REC & COLAÇO G. 2021. A multicriteria decision model to rank workstations in a footwear industry based on a FITradeoff-ranking method for ergonomics interventions. Operational Research.), for instance, considered the association of two PSMs (VFT and SODA), to structure a hierarchy of key objectives for evaluating the decision process of a foot industry. Preference modeling was conducted in a flexible and interactive manner, aided by FITradeoff. This intervention was considered successful for prioritizing workstations in ergonomic decision problems.

Silva et al. (2019SILVA M, HIPEL K, KILGOUR DM & COSTA A. 2019. Strategic Analysis of a Regulatory Conflict Using Dempster-Shafer Theory and AHP for Preference Elicitation. Journal of Systems Science and Systems Engineering.), applied an integration of VFT and FITradeoff for the selection of World Class Manufacturing (WCM) projects. Their work showed the necessity and relevance of a PSM that follows a MCDA/M model to improve the decision-making for the choice of WCM projects. Monte & Morais also applied VFT and FITradeoff, in their case, in an urban water supply system. The model yielded a deep analysis of the manager’s reasoning, which was transcribed through the objective’s hierarchy, and reached a solution to the problems of the local water supply system. Other FITradeoff applications can be found in Information Technology (Poleto et al., 2020POLETO T, CLEMENTE T, GUSMÃO A, SILVA MM & COSTA A. 2020. Integrating value-focused thinking and FITradeoff to support information technology outsourcing decisions. Management Decision, 58(11): 2279-2304.); Maintenance Outsourcing (Rodrigues et al., 2023RODRIGUES A, CAVALCANTE CAV & ALBERTI A. 2023. A multicriteria model to support the selection of inspection service providers based on the delay time model. Intl.); Social Sustainability (Passos Neto et al., 2021NETO GMP, ALENCAR LH, RABBANI ERK & VALDES-VASQUEZ R. 2021. An Analysis of Social Sustainability Indicators Using FITradeoff Multicriteria Decision Method. In: 2021 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM). p. 457-461. Singapore, Singapore.); Renewable Energy (Fossile et al., 2020FOSSILE D, FREJ E, COSTA S, LIMA E & ALMEIDA A. 2020. Selecting the most viable renewable energy source for Brazilian ports using the FITradeoff method. Journal of Cleaner Production, 260: 121107.); Management and Industry (De Oliveira et al., 2022OLIVEIRA A, SILVA W & MORAIS D. 2022. Developing and prioritizing lean key performance indicators for plastering supply chains. Production, 32.; Zanazzi et al., 2023ZANAZZI J, ZANAZZI JL & PONTELLI D. 2023. Prioritization of improvement actions in industrial production: application of the FITradeoff method to order improvement actions identified through the failures modes and effects analysis (FMEA). Pesquisa Operacional, 43(spe1): 263696.); Circular Food Economy (Lugo et al., 2023LUGO S, ALMEIDA JA & NISHINO N. 2023. A circular food economy multicriteria decision problem based on the fitradeoff method. Pesquisa Operacional, 43(spe1): 263528.); Agriculture (Carrilo et al., 2018CARRILLO P, ROSELLI L, FREJ E & ALMEIDA A. 2018. Selecting an agricultural technology package based on the flexible and interactive tradeoff method. Annals of Operations Research, p. 1-16.; Rodriguez et al., 2021RODRIGUEZ J, KANG T, FREJ EA & ALMEIDA A. 2021. Decision-making in the purchase of equipment in agricultural research laboratories: a multiple-criteria approach under partial information. Decision Science Letters, 10(4): 451-462.), among others (De Almeida et al., 2023ALMEIDA A, FREJ E, ROSELLI L & COSTA A. 2023. A summary on FITradeoff method with methodological and practical developments and future perspectives. Pesquisa Operacional, 43(spe1).).

2.2 Waste sorting and MCDA/M

Municipal waste management problems have been analyzed and solved by utilizing various tools and techniques all through the past decades (Singh, 2022). From the MCDA/M perspective, the literature shows that studies using this type of techniques in solid waste management are predominantly addressed to problems related to MSW involving facility location or management strategy (Coelho et al., 2017COELHO L, LANGE LC & COELHO H. 2017. Multi-criteria decision making to support waste management: A critical review of current practices and methods. Waste Management & Research, 35(1): 3-28.). Moreover, one may find a limited amount of works about circular economy transition (Silva & Morais, 2021SILVA WDO & MORAIS DC. 2021. A Group Decision Support System to Share Responsibilities Towards a Circular Economy Transition for Solid Waste Management in Developing Countries. In: 2021 IEEE International Conference on Systems, Man, and Cybernetics (SMC). p. 2221-2226. Melbourne, Australia.), assessment of solid waste treatment techniques (Omran et al., 2023OMRAN II AS, AANH S & HASHIM K. 2023. A new framework for assessing the sustainability of municipal solid waste treatment techniques applying multi-criteria decision analysis. Int. J. Environ. Sci. Technol, 20: 9683-9692.; Toro et al, 2023TORO E, MARTíNEZ A & CORTÁZAR A. 2023. Sequential Methodology for the Selection of Municipal Waste Treatment Alternatives Applied to a Case Study in Chile. Sustainability, 15: 7734.), assessment and monitoring of MSWM services or facilities and research related to waste transportation and collection routing (Coelho et al, 2017COELHO L, LANGE LC & COELHO H. 2017. Multi-criteria decision making to support waste management: A critical review of current practices and methods. Waste Management & Research, 35(1): 3-28.), among others. When it comes to waste sorting programs, the literature presents innumerous research regarding general aspects of this topic, but there is no evidence of multicriteria methods used to support the improvement of waste sorting policies.

Rousta et al. (2020ROUSTA K, ZISEN L & HELLWIG C. 2020. Household Waste Sorting Participation in Developing Countries A Meta-Analysis. Recycling, 5(1): 6.) on their work, conducted a meta-analysis of the factors that influence participation in household waste sorting in developing countries. Results of this meta-analysis indicate that knowledge, situational factors, such as physical conditions, and governmental incentives can influence participation in household waste sorting in developing countries. This study, however, does not present courses of actions which waste managers may take to improve their waste sorting practices. Dahlén & Lagerkvist (2010), propose the evaluation of recycling programs in household waste collection systems. The aim is to contribute to the understanding of how recycling programs affect the quantity of waste and sorting activities. Their research identified 43 factors influencing the output of source-sorting programs in household waste collection systems. Three indicators concerned with source sorting, mis-sorting and participation reflect the current ability of the inhabitants to sort waste for recycling. On the other hand, this study shows the need to further research to support policy development.

Knickmeyer (2019KNICKMEYER D. 2019. Social factors influencing household waste separation: A literature review on good practices to improve the recycling performance of urban areas. Journal of Cleaner Production, 245: 118605.), on the other hand, presents a literature review to support waste manager practitioners and policy makers to design future strategies and interventions to motivate household waste separation behaviour. The research emphasizes the relevance and consideration of its underlying social factors when it comes to the successful implementation of MSWM Systems. Results show that targeted communication and educational programs that involve the community and present sorting wastes as a social norm are crucial for the establishment of a recycling culture. The work presents many approaches for the development of practicable solutions, but is supposed to serve solely as a basis for context-specific investigations. As previously discussed, research related to waste sorting normally focuses on general aspects of the issue, lacking on the identification of waste sorting policies or the exploration of such policies in order to improve waste sorting programs.

However, there are findings in the literature that are associated with multicriteria decision models to support waste management decisions (Coelho et al., 2017COELHO L, LANGE LC & COELHO H. 2017. Multi-criteria decision making to support waste management: A critical review of current practices and methods. Waste Management & Research, 35(1): 3-28.). Thus, more studies are necessary to evaluate the results of structuring and developing multicriteria decision models to find plausible recommendations when it comes to waste sorting. These gaps motivate the choice of the research question examined in this study. Hence, this research aims to contribute to the literature applying SSM and FITradeoff through a methodological intervention in solid waste management due to the gap in the applicability of such approaches in this context, especially regarding waste sorting. Moreover, it considers bringing the practical and feasible aspects of applying these approaches together, in the waste sorting context.

3 PROPOSED MODEL

This section proposes the development of a model based on a multimethodological intervention using SSM and FITradeoff to the prioritization of alternatives in order to improve and expand a waste sorting project. The model is divided into two stages (Figure 2): (i) problem structuring stage and (ii) problem evaluation stage.

Figure 2
Flowchart of the proposed model.

3.1 Problem structuring stage

In the first stage, the problematic situation is characterized. A problem of this nature commonly deals with different stakeholders who influence the context in many aspects. These stakeholders must be identified and their roles must be considered. At this stage, the DM thinks about how to expand and improve the waste sorting. From this perspective, the DM will be able to explore and express the problematic situation through interviews, brainstorming, and also data collection and observation of documents.

After the definition and exploration of the problematic situation, it will then be expressed through the Rich Picture, which is a visual tool that allows the inclusion of details for a better comprehension of the situation. Then, the root definitions of such a problem are created and discussed. These root definitions deal with the core competence of human activity, as well as its elements. According to Checkland & Poulter (2020CHECKLAND P & POULTER J. 2020. Soft Systems Methodology. Chapter, 5: 201-253.), the elements of the root definition (CATWOE) are:

  • Customer: Who are the victims or beneficiaries of the system?

  • Actors: Who will perform the activities?

  • Transformation: What transformations will the activities fulfil?

  • Worldview: What point of view validates the root definition?

  • Owner: Who can stop this activity?

  • Environment: What are the external constrains?

Then, the conceptual models are developed, which are a structured set of activities necessary to achieve the expected objectives in the root definitions, as well as the existing relationships between these activities. After that, the conceptual models will then be compared to reality. The developed model works as a basis for comparison with reality and, based on the perceived differences, points will be raised for the discussion of the problem, as well as solutions and suggested changes (which is the main objective of this step).

Changes proposed in the previous step are then discussed, checking if they are feasible and desirable. These changes can be of three types, structural, procedural, and attitudinal. They also depend on acceptability, culture, and economic feasibility for implementation. With that, as a consequence of the problem structuring stage, the criteria of the problem will be identified, as well as the set of actions. The identification of actions is a step to which one can always return in the course of the process.

3.2 Problem evaluation stage

In the second stage, the analytical process of the model is performed, i.e., there will be considered the quantitative aspects of it. Thus, in the first and second steps preference modeling and method selection, respectively the aspects involved in multicriteria method selection are structured. Next, the alternatives will be evaluated to obtain the results; here the multicriteria method is finally applied. A sensitivity analysis is then performed to verify the robustness of the developed model.

Finally, one should prepare a recommendation and the necessary aspects are planned for the correct implementation of the decision. This phase ends when opportunities and recommendations are identified for the continuous improvement of model performance. It is worth mentioning that a facilitator/analyst is needed in the whole process (structuring and prioritization stages), which is the one responsible for organizing the process from the technical viewpoint and setting up the decision support model.

4 CASE STUDY IN PERNAMBUCO STATE

In this section, we will present the application of the proposed model in a case study of waste sorting located in Recife, capital and largest city of Pernambuco State, Brazil.

EcoRecife is a waste sorting service offered by Recife municipal management. It aims to make the recyclable material discarded domestically by Recife’s population reach waste pickers’ cooperatives. This action promotes the improvement and preservation of the environment and also generates jobs and income for waste pickers. They play a fundamental role in the process of correct waste disposal, as they separate all the material and provide what is useful to the recycling industry located in Recife Metropolitan Area, which is the largest industrial recycling complex in Northeastern Brazil. Considering the necessity of improving operational practices faced by municipal public management and cooperatives, and the potential for its expansion, this project was chosen for the application of the proposed multi-methodological intervention.

4.1 Problem structuring stage

At this stage, SSM was initially chosen to aid the process of structuring the problem in an AFT (Alternative-Focused Thinking) perspective. As previously mentioned SSM is an approach that works with the environment and the learning process to analyze complex problems. It emphasizes the evaluation of the real world, in which people live and with which they relate. Thus, the purpose of this stage is to assess the problem comprehensively, in order to build a conceptual model that may allow the identification of stakeholders, possible alternatives, objectives, criteria, and general aspects about the problem.

4.2 Study and express the problematic situation

The DM of this problem is the city municipal manager (mayor), once he is formally responsible for the USW management generated by the municipality according to Brazilian law, thus, his preferences will be considered in the model. Nowadays, only 2% of the USW is recycled compared to the recycling potential of the waste volume collected in Pernambuco State (SEMAS-PE, 2020SEMAS-PE. 2020. Secretariat of Environment and Sustainability of Pernambuco. Available at: https://agenciaeconordeste.com.br/pernambuco-preve-universalizacao-dos-aterros-sanitarios-para-2022/.
https://agenciaeconordeste.com.br/pernam...
). The percentage of recycled material is still low compared to waste production, but companies are beginning to realize that big business is not just receiving and burying it. The DM interacts with several stakeholders in the problem, these are: cooperatives and waste pickers that are part of the waste sorting program, the recycling industry that buys the scrap from the cooperatives, and the local community that participates in waste sorting actions.

First of all, the analyst encouraged the DM to think about the problem starting from the initial questioning of “which aspects hamper to expand and improve waste sorting services?” From this initial statement, in a brainstorming process, the DM’s perspectives of the problem were expressed in a Rich Picture (Figure 3), which provides a better understanding of all the factors and stakeholders involved. The stakeholders identified and their roles in the process are described below.

Figure 3
Rich Picture of the problematic situation.

The purchasing (recycling) industry currently has no restrictions on the volume of scrap received due to the low volume sent by its direct suppliers (cooperatives). The purchasing industry wants to increase the volume of material received as long as it is within the specifications, and may even pay more attractive prices for better quality inputs.

On the other hand, there are recycling cooperatives that develop the process of treating recyclable materials and sending them to the recycling industry, through the collection, sorting, and sale of the material. These cooperatives, however, need to improve their operational practices to provide appropriate material to their purchasers to strengthen the relationship with the recycling industry by increasing the volume of material sold as well as the selling price. Furthermore, the waste pickers, who work for the cooperatives, need better work conditions and training to improve their activities and contribute to increase performance as well as their quality of life.

The local community is also a stakeholder in this problem as it is the generating source of USW. Furthermore, it is through the active participation of the community that the waste sorting process begins, through the separation of waste at source and its subsequent distribution, either through the residential collection, or at official collection points (eco-points and eco-stations located throughout the city). Thus, their awareness as well as their participation is essential for the success of the project.

4.3 Identify root definitions of the relevant system

During the discussions supported by the Rich Figure, the following considerations emerged:

  1. Strengthen and expand infrastructure;

  2. Improve the quality of life of waste pickers, in economic, training, and work environment terms;

  3. Strengthen the relationship with the recycling industry;

  4. Improve operational practices for solid waste collection, transport, and sorting.

For each of the statements identified above, the essential (root) definitions of the problem will be specified. Thus, the components of the root definitions (CATWOE) are determined as follows (Tables 1-4):

Table 1
The elements of a CATWOE and their root definition 1.

Table 2
The elements of a CATWOE and their root definition 2.

Table 3
The elements of a CATWOE and their root definition 3.

Table 4
The elements of a CATWOE and their root definition 4.

4.4 Build a conceptual model

After identifying the root definitions for the problem, the conceptual model is developed. A conceptual model is a structured set of activities necessary to achieve the objectives expected in the root definitions and shows the relationships between these activities. Thus, modeling is based on the root definitions and the CATWOE elements; it is done by using verbs to describe activities and by assembling a handful of such activities structured in terms of logical dependence. Figure 4 presents the conceptual model of the problem.

Figure 4
Conceptual model.

Aiming to ease the understanding of the processes described in the conceptual model, Table 5 presents a description for each action.

Table 5
Detailing the conceptual model actions.

The conceptual model should incorporate the processes of monitoring and control, which establish measures of performance. Monitoring and control were described in terms of efficacy, efficiency, and effectiveness (“3Es”) (Checkland & Poulter, 2020CHECKLAND P & POULTER J. 2020. Soft Systems Methodology. Chapter, 5: 201-253.). Efficacy normally refers to verifying if the system works, in the sense of producing its intended outcome; efficiency is used to assess if the transformation is being achieved with minimum use of resources; and effectiveness is used to evaluate if the system is helping achieve some higher-level or longer-term aim. The definitions of the principles to evaluate the system, according to the root definition, in terms of “3Es” are:

  • Efficacy: Recyclable material is delivered in good quality (within specifications) to the recycling industry;

  • Efficiency: A balance is achieved when the amount of non-economic material collected is reduced to acceptable levels;

  • Effectiveness: The system increases the waste collection area, and consequently the community’s participation and the volume of recyclable material for sale; the cooperatives increase their revenue and reduce overall costs.

The 3Es enable the system to be continuously controlled, monitored, and reported. Thus, the DM will be able to verify what is being done and what can be done compared to what was established in the CATWOE and in the conceptual model.

4.5 Compare conceptual model to reality and identify changes

At this step, the model is compared to reality expressed in the Rich Picture from step 2. The constructed model serves as a basis for comparison to reality and, based on the perceived differences, points will be raised for the discussion of the problem, as well as suggested solutions and changes. These changes are also discussed in this step, checking whether they are feasible and desirable.

Changes may be of three types, these are changes to structures (structural), changing processes or procedures (procedural), and changing attitudes (attitudinal). They also depend on acceptability, culture, and economic feasibility for implementation. Hence, the desirability and feasibility of the identified actions are verified, and they are then classified according to their type, as can be seen in Table 6.

Table 6
Comparison between conceptual model and real world.

4.6 Identify criteria

Considering the objectives identified in the initial stages of SSM, the analyst encouraged the DM to think about how these objectives could be measured through the criteria. Thus, seven criteria were determined that will enable quantifying the objectives and evaluating the performance of the previously identified alternatives. Table 7 presents each criterion followed by their description.

Table 7
Criteria and their characteristics.

Criteria C 1, C 4, C 6, and C 7 are classified as natural criteria, once they can be directly measured, therefore they have well-defined numerical evaluation scales. On the other hand, criteria, C 2 C 3, and C 5, are classified as constructed ones and will be scored on a semantic scale, as shown in Tables 8, 9 and 10, respectively.

Table 8
Scale for criterion C 2.

Criteria C 1, C 4, C 6, and C 7 are classified as natural criteria, once they can be directly measured, therefore they have well-defined numerical evaluation scales. On the other hand, criteria, C 2 C 3, and C 5, are classified as constructed ones and will be scored on a semantic scale, as shown in Tables 8, 9 and 10, respectively.

Table 8
Scale for criterion C 2.

Table 9
Scale for criterion C 3.

Table 10
Scale for criterion C 5

4.7 Determine final set of actions

At this stage, a deeper analysis of the alternatives (from Table 5) will be carried out to determine which ones will be appropriate for the multicriteria model. Hence, after identifying the alternatives in the previous stages, it was noticed that some of them do not fit the analytical (multicriteria) model, as they are considered strategic alternatives and their performances cannot be measured according to the established criteria.

The DM should look at these alternatives from a more strategic and less operational perspective, as these alternatives are related to the objective of strengthening the relationship with the recycling industry (alternatives A10, A11, and A12), and require a perception at the medium and long term. These alternatives are: “Increase the number of purchasing industries”, “Negotiate with purchasing industry for more attractive prices”, and “Adapt to the guidelines of the NSWP”. The remaining alternatives will be considered in the prioritization stage. Table 11 presents the consequence matrix with the alternatives and their performances in each criterion.

Table 11
Consequence matrix.

4.8 Problem evaluation stage

In this stage is performed the analytical process of the model to obtain the final ordering of alternatives.

4.9 Method selection and preference modelling

In this step, the appropriate preference structure must be defined to represent the DM’s preferences. It was identified that the structure (P, I) is adequate for this situation, where P represents strict preference and I, indifference. In such a way, its evaluation can be obtained through the analysis of the marginal value function in which an alternative is preferable to another if it exceeds the performance of that alternative, otherwise, if the value functions have the same performance, there is indifference. Furthermore, it was noticed that the DM’s rationality for the problem is compensatory, once, there is compensation for a lower performance of an alternative in a given criterion, through better performance in another. In this way, compensatory rationality considers the existence of trade-offs between the criteria, while evaluating an alternative, as previously discussed.

Thus, the global evaluation of the alternatives can be carried out through the compensation of the consequences in all the criteria under consideration. Therefore, taking into account all these characteristics, the appropriate approach is the deterministic additive aggregation (MAVT) corresponding to the unique criterion of synthesis method, which allows obtaining a global score for each alternative. Hence, to support the preference modeling process, the analyst used FITradeoff’s DSS for ranking problematic (available online at www.fitradeoff.org) to facilitate the DM in the preference elicitation process.

To perform the aggregation in the additive model, the global value function requires the intracriteria evaluation to be carried out, so that, the values of the consequences in the criteria are on an interval scale, 0 to 1, where 1 represents the best performance and 0, the worst performance. This normalization is done automatically by the DSS since the consequence matrix (from Table 11) will be input into the system. Without this normalization, it would not be possible to resolve the LPP proposed by the method, since it would present different intervals in relation to the assessments.

The next step is ranking the criteria by overall evaluation. Initially, the criteria must be ranked according to the order of impact they will generate on the final result of the problem as a whole, according to the DM’s preferences. Hence, the DM has to choose the criterion that he/she considers to have the highest scale constant value, assuming that it will have its performance optimized to the best possible value. It is done by considering that the DM may improve the performance of an alternative in just one criterion for its maximum value, with all others having a minimum value. This procedure allows ranking the scale constants of all criteria. The order established by the DM in the overall evaluation process is the following:

K C 1 > K C 6 > K C 2 > K C 4 > K C 5 > K C 7 > K C 3 (2)

After ordering the scale constants (weights), the DM continues the process through the elicitation by decomposition. In this step, two hypothetical consequences are presented to the DM. In the first scenario, an intermediate consequence value is displayed in a criterion (for which the associated weight appears better positioned in the ranking) and the worst consequence for the others; whereas the second scenario presents the best consequence for a subsequent criterion and the worst performance for the others (Figure 5).

Figure 5
Flexible elicitation of the scale constants.

Then, it is asked which consequence the DM prefers among the options presented, where he/she can answer: “consequence A”, “consequence B”, “indifference”, or even “no answer”. The preferences informed will be used for the construction and resolution of an LPP, allowing the establishment of relationships between alternatives based on the partial information obtained for each question. Thus, after the DM answered the first question, another question was asked, and the weight space was updated. The system also presented some information about the DM elicitation process, such as the number of questions answered, which is updated according to the number of responses, and the number of ordering levels.

The FITradeoff method does not seek to find exact values for the scale constants, but rather a space of feasible weight values, which will narrow the range within each criterion as the DM’s information is collected. With the ordering of the scale constants done previously and the elicitation process, after 9 questions, it was possible to establish a maximum and a minimum limit for each constant (Figure 6). The Hasse Diagram generated by the DSS with the recommended final ranking of alternatives can be seen in Figure 7.

Figure 6
Scaling constants boundaries graph.

Figure 7
Hasse diagram with the final ranking of alternatives.

4.10 Evaluation of alternatives

After the entire elicitation process of the DM’s preferences, the result obtained by applying FITradeoff shows the prioritization of actions in a complete ranking to support the improvement of the waste sorting, as can be seen in Table 12. According to the preference information given by the DM, A3 is considered the best alternative to improve the waste sorting program. In other words, some relations of dominance of the alternatives were found by the LPP model, while at level 1 there is A4, in which this alternative dominates the others. Thus, ”expand the waste sorting to neighborhoods where these services do not exist” is considered the best alternative to be taken.

Table 12
Recommendation.

Following the evaluation, A6 and A1 are the next alternatives recommended by the ranking. Alternative A6 suggests the use of management tools in the work environment to improve cooperatives’ operational practices as the second best option obtained by the model. A1, in turn, suggests increasing the waste collection and transport fleet as a way to expand the program, both alternatives dominate the other alternatives that follow the complete ranking obtained (Table 12).

It is worth mentioning alternative A5, which is in the last position of the ranking. This alternative presents the worst performance in criteria C2, C4, C6, and C7, and very low performance (the second worst) in C1, which, according to what was established by the DM’s preferences, placed it as the least interesting option for the problem.

4.11 Sensitivity analysis

After the evaluation of the alternatives proposed by the FITradeoff recommendation, the next step is to perform a sensitivity analysis to verify the robustness of the model. The sensitivity analysis studies the impact that variations in the model’s parameters may have on its output. This step is also performed by the FITradeoff DSS, where the parameters, in this case, the values of the consequences in most of the problem criteria varied in a ± 15% bound. The results obtained can be seen in Figure 8.

Figure 8
Sensitivity analysis.

For this sensitivity analysis, the values of the consequences in criteria C1, C2, C3, and C5 simultaneously varied in a ± 15% bound. Thus, this analysis shows the percentage of simulation instances in which the alternatives remain in their original rank position or in which the alternatives’ rank position changes. The obtained results present that almost all alternatives (except alternative A2) remain in the original rank position most of the time when comparing the percentage of times they were ordered in the original position with any other position in the rank. In particular, alternative A3, which appears in the first position in the original prioritization ranking and remains 100% of the time as the most preferable one.

Alternatives A4, A5, A6, A7, and A8 remain in their original position at least 74% of the time. The only alternative that changes its position most of the time compared to the original rank position is alternative A2. However, this change is not so alarming since this alternative moves from fifth to fourth position most of the time when it is not in its original rank position, thus not bringing discrepant changes from the original ranking. Hence, it can be affirmed that the model is robust for the sensitivity analysis performed. The percentage of times that each alternative changes its position regarding the original ranking can be verified in Table 13.

Table 13
Percentage of times that each alternative was ordered in a given position.

4.12 Recommendation and implementation of decision

In the final step, the DM and stakeholders should start the implementation of the decision, following the order of priority obtained by the model, selecting the necessary resources for implementation, whether these are financial, human or of other nature.

There are some critical points associated with this step. For example, situations in which the time spent in the process until the choice of actions is much less than the duration of time for their implementation. Decisions are assumed to be stable, at least until actions are implemented. However, when the time until implementation is too long, changes may occur that make the model not so compatible with reality, new problems may arise due to lack of actions, and the implementation process may not be as effective.

Thus, it is up to the DM to plan the process of implementing the actions suggested here by the developed model, seeking the necessary resources for their execution and adequate planning so that they can be implemented in the best possible way.

4.13 Managerial Implications

The obtained results show the importance of applying the proposed model to order alternatives for the expansion and improvement of waste sorting through the use of a multimethodological intervention. Using formal approaches to support decision-making allows a structured and guided decision-making process instead of only taking into account the DM’s empirical knowledge about the problem. Thus, the proposed model that combines SSM and FITradeoff enables ranking the alternatives with more credibility and confidence.

Analyzing the use of SSM in the problem structuring stage, it should be noted that it enables to understand the various aspects that characterize the status quo of the problem. Furthermore, it allows determining the DM’s objectives to improve the current situation and identifying the relevant systems and conceptual model of the problematic situation. Then, the conceptual (ideal) model is compared to the real world, verifying the feasibility and desirability of the identified alternatives. In addition, SSM permits to evaluate the system in terms of its efficiency, efficacy, and effectiveness, as well as, helps determine the criteria and the final set of alternatives to be considered in the prioritization stage. In sum, SSM proved to be very useful for the problem structuring stage, allowing a deep evaluation of the problem and a broad identification of alternatives.

In addition, results reveal the importance of considering a multicriteria approach to support decision-making in situations that involve prioritizing alternatives in waste sorting, once several options with different consequences in the criteria must be evaluated simultaneously. The FITradeoff method enables the evaluation of these alternatives analytically in an organized way allowing their final ranking. Having in mind that one of the most challenging aspects in a multicriteria decision problem is the elicitation of the scale constants (weights), the FITradeoff method eases this process as it reduces the cognitive effort required from the DM and also allows reducing errors by using partial information. Furthermore, the flexibility of the process means that elicitation can be changed to different conditions and circumstances as they occur interactively, with the aim of requiring less information from the DM.

From the DM’s point of view, FITradeoff did not require much effort to solve the problem. This can be verified in the literature since the preference relation P requires less cognitive effort than the indifference relation I (DE ALMEIDA et al., 2016ALMEIDA A, ALMEIDA J, COSTA A & ALMEIDA-FILHO A. 2016. A New Method for Elicitation of Criteria Weights in Additive Models: Flexible and Interactive Tradeoff. European Journal of Operational Research, 250(1): 179-191.), once each question is answered by the DM, the range of scale constants decreases, thus not requiring that the indifference value of the criteria is informed by the DM, which differs from the traditional tradeoff procedure (Keeney and Raiffa, 1976KEENEY RL & RAIFFA H. 1976. Decisions with multiple objectives: Preferences and value tradeoffs. Cambridge University Press.). Therefore, at first, the DM ordered the scale constants of the criteria (overall evaluation). Then, the flexible elicitation was performed, where a range of values for the scale constants are calculated in a structured way based on a Linear Programming Problem (LPP). Lastly, the flexible elicitation process drew relevant conclusions for the decision after answering 9 questions, obtaining a final ranking of alternatives.

Furthermore, the use of such multimethodological intervention allowed the DM to obtain a deeper knowledge about the problem and a logical way for prioritize the alternatives to improve the waste sorting program. At first, there were difficulties by the DM in understanding many aspects of the problem in an integrated and holistic way. With the application of a formal approach such as the SSM, the process of understanding the problem takes place in a structured manner, which allows a systematized reflection for the DM. Some aspects of the problem that the DM not been taken into consideration, or were considered secondary to the problem such as, improve the quality of life of waste pickers or strengthen the relationship with the recycling industry, were recognized after the PSM use.

Moreover, some alternatives found after the SSM application were not very clear or even inexistent from the DM’s perspective. SSM allowed the DM to think broader and consider unnoticeable aspects of the problem, which made possible to the DM identify new alternatives, specially those of procedural and attitudinal nature, such as “provide appropriate resources for employees to work”, “use management tools in the work environment”, and “conduct employee training for sorting activities”. With the application of FITradeoff, the DM has a ranking of alternatives based on a rational analysis of their preferences. The proposed recommendation states that the DM’s first alternative is “add new neighborhoods to the project”, which corroborates the constrains found in the initial program, once the waste sorting services are not operating in the whole city. The need to improve the internal operations of cooperatives was also a core element discussed, which is strengthened by alternative A6 in second position in the ranking, as cooperatives need to optimize their internal processes in seeking to improve efficiency. Another central alternative that follows the proposed recommendation is also of structural nature, as it deals with the acquisition of new fleets for the expansion of waste sorting services, which is essential for increasing population participation and consequently increase the volume of collected material.

Finally, the methodological intervention of a PSM with an MCDA/M method carried out in the context of solid waste management proved to be successful, and the model developed in this research can be replicated in several similar situations faced by managers who aim to improve their waste sorting services. Therefore, it should be noted that the use of SSM to explore and structure the problem, as well as, to identify objectives and alternatives shows to be very appropriate in the solid waste management context. Furthermore, FITradeoff as a flexible interactive method allows a structured preference elicitation process, enabling for a more robust decision-making while promoting oriented recommendations. Thus, the methodological integration proved to be satisfactory, with outstanding results in this research.

5 FINAL REMARKS

The increase in the amount of solid waste generated annually around the world and the environmental, economic, and social implications that this has caused to society has increased the awareness of the population and public managers of solid waste management, especially regarding adequate disposal and recycling actions. In this paper, we reported a case study where we developed a model that combined SSM and FITradeoff to help improve and expand waste sorting services. SSM was applied in the structuring stage and helped explore and understand the problematic situation allowing the identification of alternatives. The Fitradeoff method was used in the prioritization stage to perform preference modeling to get a final ranking of alternatives.

The proposed model based on a multimethodological intervention provided a structured approach to aid better decision-making in the solid waste management context.

More precisely, SSM allowed for the identification of the fundamental and strategic aspects of the problem, creating a broad structure for the DM. Seven criteria were identified to represent the fundamental objectives related to this specific problem, and nine alternatives were evaluated against these criteria. The FITradeoff ranking method provided an adaptive cognitive structure to conduct the modeling of preferences considering the preferences of the DM within a compensatory approach. For this, the FITradeoff Decision Support System assisted the DM in the elicitation process, so that the DM would respond interactively to the proposed questions; the dominance relationships between the pairs of alternatives were sought through the solution of linear programming problems. The application of the FITradeoff method exhibited one of its main characteristics, namely, flexibility. Thus, with each response intention, the system computes the intention considering partial information, ensuring more consistency in the decision-making process.

This research contributes to the accumulating evidence on combining soft and hard OR approaches. By combining a softer learning-orientated and problem structuring method, SSM, with a hard approach such as FITradeoff, a multiparadigmatic multimethodology was developed and applied to waste sorting services in Brazil. The successful adoption of SSM and FItradeoff in this multimethodological intervention reveals its applicability in the solid waste management context and the possibility of its replication. Thus, this paper adds to the literature on OR hard and soft method’s combination presenting the practical aspects of such intervention.

This study fills a gap in the literature on the assessment of subjective DM’s perspectives in decision problems for prioritizing alternatives regarding waste sorting. Decisions made in solid waste management can encompass complex aspects, since this type of problematic situation commonly involves a considerable set of actors with countless objectives, criteria, and alternatives to be analyzed, making it difficult for managers to structure information and carry out a consistent evaluation of the process without the support of formal approaches. Therefore, as suggestions for future work, the proposed model addressed in this research can be applied to other situations in which it requires structuring and prioritizing complex problems in the solid waste management context. In addition, it is possible to adapt this model to support group decision situations; i.e., considering several DMs in the decision problem and developing preference modeling for the prioritization stage of alternatives based on existing group decision approaches.

Acknowledgements

The authors would like to acknowledge the financial support of Fundação de Amparo à Ciência e Tecnologia de Pernambuco (FACEPE), and the general support of the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES), and the Conselho Nacional de Desenvolvimento Científico e Tecnólogico (CNPq).

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Publication Dates

  • Publication in this collection
    19 Aug 2024
  • Date of issue
    2024

History

  • Received
    03 Dec 2023
  • Accepted
    09 Mar 2024
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