TY - JOUR
T1 - Electric vehicle routing optimization for sustainable kitchen waste reverse logistics network using robust mixed-integer programming
AU - Shi, Yi
AU - Vanhaverbeke, Lieselot
AU - Xu, Jiuping
N1 - Funding Information:
This research was supported by Chinese Universities Scientific Fund (Grant no. 2010SCU22009 ), the Scientific Research Starting Foundation of Sichuan University (Grant No. 2015SCU11034 ) and the National Natural Science Foundation (Grant No. 71601134 ).
Funding Information:
This research was supported by Chinese Universities Scientific Fund (Grant No. 2010SCU22009), the Scientific Research Starting Foundation of Sichuan University (Grant No. 2015SCU11034), the National Natural Science Foundation (Grant No. 71601134) and the Funds for Sichuan University to Building a World-class University (Grant No. skbsh2024-48).
Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/10
Y1 - 2024/10
N2 - This paper proposes an innovative reverse logistics network (RLN) to manage kitchen waste (KW) transportation and resource treatment. The network employs battery electric (BE) trucks for transportation, and the challenge lies in determining the distribution of various KW treatment centers and establishing the optimal transportation routes for KW and its residues. The proposed RLN is self-sufficient, because the electricity produced by the centers within the network is adequate to power the BE trucks. We develop a matched mixed-integer programming model to optimize the entire process, with the goal of minimizing the total potential economic and environmental costs. Notably, the model considers comprehensive cost components and employs a carbon trading policy to translate carbon emissions into carbon costs. We use robust optimization to generate optimal solutions that remain viable even under the worst-case scenario concerning uncertain parameters. We then test the feasibility of the proposed methodology in a real-world case. We conduct specific scenario analyses on capacity and mode of trucks to offer practical KW transportation strategies and recommendations. We found that the larger the capacity of a BE truck, the greater the economic and environmental benefits for the KW RLN. The self-sufficient KW RLN using BE trucks proved to be the least costly, followed by the ordinary KW RLN using BE trucks, while the KW RLN using diesel trucks was the most expensive and environmentally detrimental.
AB - This paper proposes an innovative reverse logistics network (RLN) to manage kitchen waste (KW) transportation and resource treatment. The network employs battery electric (BE) trucks for transportation, and the challenge lies in determining the distribution of various KW treatment centers and establishing the optimal transportation routes for KW and its residues. The proposed RLN is self-sufficient, because the electricity produced by the centers within the network is adequate to power the BE trucks. We develop a matched mixed-integer programming model to optimize the entire process, with the goal of minimizing the total potential economic and environmental costs. Notably, the model considers comprehensive cost components and employs a carbon trading policy to translate carbon emissions into carbon costs. We use robust optimization to generate optimal solutions that remain viable even under the worst-case scenario concerning uncertain parameters. We then test the feasibility of the proposed methodology in a real-world case. We conduct specific scenario analyses on capacity and mode of trucks to offer practical KW transportation strategies and recommendations. We found that the larger the capacity of a BE truck, the greater the economic and environmental benefits for the KW RLN. The self-sufficient KW RLN using BE trucks proved to be the least costly, followed by the ordinary KW RLN using BE trucks, while the KW RLN using diesel trucks was the most expensive and environmentally detrimental.
KW - Kitchen waste
KW - Mixed-integer programming
KW - Reverse logistics network
KW - Transportation capacity
KW - Transportation mode
KW - Vehicle routing problem
UR - http://www.scopus.com/inward/record.url?scp=85196046424&partnerID=8YFLogxK
U2 - 10.1016/j.omega.2024.103128
DO - 10.1016/j.omega.2024.103128
M3 - Article
AN - SCOPUS:85196046424
VL - 128
JO - Omega
JF - Omega
SN - 0305-0483
M1 - 103128
ER -