TY - JOUR
T1 - A stochastic Fermatean fuzzy-based multi-choice conic goal programming approach for sustainable supply chain management in end-of-life buildings
AU - Deliktaş, Derya
AU - Karagoz, Selman
AU - Simić, Vladimir
AU - Aydin, Nezir
N1 - Publisher Copyright:
© 2022 Elsevier Ltd
PY - 2023/1/1
Y1 - 2023/1/1
N2 - Due to natural disasters, urban transformations and many other factors, sustainable end-of-life buildings (ELBs) waste management is gaining importance within the last decades, which is vigorous for both economic and conservation matters. Turkey is located on active zones in terms of natural disasters and faced numerous destructive events. Therefore, the government initiated a program to renew the ELBs. Even though several studies analyzed post-disaster debris management, there are not many studies focusing on pre-disaster debris management. Thus, this study proposes a two-stage stochastic model to optimize the supply chain network of ELBs and manage the debris stemmed from the destruction of the ELBs. With this aim, the criteria and the alternatives for evaluating the objectives are defined, experts’ evaluations for objectives are integrated into the model, Fermatean fuzzy-based weighting approach is introduced to transfer the experts’ views on the importance of the objectives, and the stochastic Fermatean fuzzy-based multi-choice conic goal programming (FF-MCCGP) and the revised-MCGP methods are used to provide optimal facility locations, and the amount of debris to transfer within the network. The stochastic FF-MCCGP approach outperforms the revised-MCGP in most cases, where they are compared. Furthermore, a sustainable management strategy is offered to control the economic, pollution, land-use stress and population health factors. This study is one of the pioneer studies that eases the consequences of diseases, urban transformation, wars, and other factors by considering the renewal of ELBs, and method can be upgraded dynamically regarding the potential needs and conditions as it offers a global road map.
AB - Due to natural disasters, urban transformations and many other factors, sustainable end-of-life buildings (ELBs) waste management is gaining importance within the last decades, which is vigorous for both economic and conservation matters. Turkey is located on active zones in terms of natural disasters and faced numerous destructive events. Therefore, the government initiated a program to renew the ELBs. Even though several studies analyzed post-disaster debris management, there are not many studies focusing on pre-disaster debris management. Thus, this study proposes a two-stage stochastic model to optimize the supply chain network of ELBs and manage the debris stemmed from the destruction of the ELBs. With this aim, the criteria and the alternatives for evaluating the objectives are defined, experts’ evaluations for objectives are integrated into the model, Fermatean fuzzy-based weighting approach is introduced to transfer the experts’ views on the importance of the objectives, and the stochastic Fermatean fuzzy-based multi-choice conic goal programming (FF-MCCGP) and the revised-MCGP methods are used to provide optimal facility locations, and the amount of debris to transfer within the network. The stochastic FF-MCCGP approach outperforms the revised-MCGP in most cases, where they are compared. Furthermore, a sustainable management strategy is offered to control the economic, pollution, land-use stress and population health factors. This study is one of the pioneer studies that eases the consequences of diseases, urban transformation, wars, and other factors by considering the renewal of ELBs, and method can be upgraded dynamically regarding the potential needs and conditions as it offers a global road map.
KW - Debris management
KW - End-of-life buildings
KW - Multi-choice conic goal programming
KW - Stochastic optimization
KW - Supply chain network design
KW - Sustainable development
UR - http://www.scopus.com/inward/record.url?scp=85143786000&partnerID=8YFLogxK
U2 - 10.1016/j.jclepro.2022.135305
DO - 10.1016/j.jclepro.2022.135305
M3 - Article
AN - SCOPUS:85143786000
SN - 0959-6526
VL - 382
JO - Journal of Cleaner Production
JF - Journal of Cleaner Production
M1 - 135305
ER -