A Closed-Loop Supply Chain (CLSC) is a complex network with unique environmental features and attributes that requires specific managerial policies and strategies. Quantitative models can provide a solid basis for these policies and strategies. This study expands the work of Shoaeinaeini et al. (2021) on Green Supply Chain Management. We propose a bi-objective facility location, demand allocation, and pricing model for CLSC networks. The proposed model considers two conflicting objective functions: maximising profits and minimising emissions. We show consumer environmental awareness can predict the products’ rate of return and determine a more suitable price for new products and the acquisition price for used products. The cap-and-trade policy has been implemented at its fullest potential, allowing the trading of carbon quotas. Therefore, companies may decide to produce less to sell more quotas or vice-versa, effectively picking the most profitable option. The model is solved and tested with the commercial solver BARON. The model effectively shows the trade-off between generating profits and emission reduction. Companies are able to turn a profit while abiding by the government’s intention of reducing emissions. The comparison with a single-objective version of the model highlights that the concurrent optimisation of economic and environmental objectives yields better results. The acquisition price of used products is a value worthy of monitoring. The government should focus on policies to assist the reverse flow of used products.

Caramia, M., Pizzari, E. (2023). A Bi-objective cap-and-trade model for minimising environmental impact in closed-loop supply chains. SUPPLY CHAIN ANALYTICS, 3 [10.1016/j.sca.2023.100020].

A Bi-objective cap-and-trade model for minimising environmental impact in closed-loop supply chains

Caramia, Massimiliano;Pizzari, Emanuele
2023-01-01

Abstract

A Closed-Loop Supply Chain (CLSC) is a complex network with unique environmental features and attributes that requires specific managerial policies and strategies. Quantitative models can provide a solid basis for these policies and strategies. This study expands the work of Shoaeinaeini et al. (2021) on Green Supply Chain Management. We propose a bi-objective facility location, demand allocation, and pricing model for CLSC networks. The proposed model considers two conflicting objective functions: maximising profits and minimising emissions. We show consumer environmental awareness can predict the products’ rate of return and determine a more suitable price for new products and the acquisition price for used products. The cap-and-trade policy has been implemented at its fullest potential, allowing the trading of carbon quotas. Therefore, companies may decide to produce less to sell more quotas or vice-versa, effectively picking the most profitable option. The model is solved and tested with the commercial solver BARON. The model effectively shows the trade-off between generating profits and emission reduction. Companies are able to turn a profit while abiding by the government’s intention of reducing emissions. The comparison with a single-objective version of the model highlights that the concurrent optimisation of economic and environmental objectives yields better results. The acquisition price of used products is a value worthy of monitoring. The government should focus on policies to assist the reverse flow of used products.
2023
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore MAT/09
English
Closed-loop supply chain; Multi-objective optimisation; Cap-and-trade policy; Consumer environmental awareness; Government subsidy; Emissions
Caramia, M., Pizzari, E. (2023). A Bi-objective cap-and-trade model for minimising environmental impact in closed-loop supply chains. SUPPLY CHAIN ANALYTICS, 3 [10.1016/j.sca.2023.100020].
Caramia, M; Pizzari, E
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/341324
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