Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm
Cross-docking is a logistics strategy that aims at less transportation costs and fast customer deliveries. Incorporating an efficient vehicle routing could increase the benefits of the cross-docking. In this paper, the vehicle routing problem with reverse cross-docking (VRP-RCD) is studied. Reverse...
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sg-smu-ink.sis_research-71092021-09-29T12:33:51Z Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm GUNAWAN, Aldy WIDJAJA, Audrey Tedja VANSTEENWEGEN, Pieter YU, Vincent F. Cross-docking is a logistics strategy that aims at less transportation costs and fast customer deliveries. Incorporating an efficient vehicle routing could increase the benefits of the cross-docking. In this paper, the vehicle routing problem with reverse cross-docking (VRP-RCD) is studied. Reverse logistics has attracted more attention due to its ability to gain more profit and maintain the competitiveness of a company. VRP-RCD includes a four-level supply chain network: suppliers, cross-dock, customers, and outlets, with the objective of minimizing vehicle operational and transportation costs. A two-phase heuristic that employs an adaptive large neighborhood search (ALNS) with various destroy and repair operators is proposed to solve benchmark instances. The simulated annealing framework is embedded to discover a vast search space during the search process. Experimental results show that our proposed ALNS obtains optimal solutions for 24 out of 30 problems of the first set of benchmark instances while getting better results for all instances in the second set of benchmark instances compared to optimization software. 2020-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6106 info:doi/10.1007/978-3-030-59747-4_11 https://ink.library.smu.edu.sg/context/sis_research/article/7109/viewcontent/Gunawan2020_Chapter_VehicleRoutingProblemWithRever.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Vehicle routing problem Cross-docking Reverse logistics Adaptive large neighborhood search Theory and Algorithms |
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Vehicle routing problem Cross-docking Reverse logistics Adaptive large neighborhood search Theory and Algorithms GUNAWAN, Aldy WIDJAJA, Audrey Tedja VANSTEENWEGEN, Pieter YU, Vincent F. Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm |
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Cross-docking is a logistics strategy that aims at less transportation costs and fast customer deliveries. Incorporating an efficient vehicle routing could increase the benefits of the cross-docking. In this paper, the vehicle routing problem with reverse cross-docking (VRP-RCD) is studied. Reverse logistics has attracted more attention due to its ability to gain more profit and maintain the competitiveness of a company. VRP-RCD includes a four-level supply chain network: suppliers, cross-dock, customers, and outlets, with the objective of minimizing vehicle operational and transportation costs. A two-phase heuristic that employs an adaptive large neighborhood search (ALNS) with various destroy and repair operators is proposed to solve benchmark instances. The simulated annealing framework is embedded to discover a vast search space during the search process. Experimental results show that our proposed ALNS obtains optimal solutions for 24 out of 30 problems of the first set of benchmark instances while getting better results for all instances in the second set of benchmark instances compared to optimization software. |
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GUNAWAN, Aldy WIDJAJA, Audrey Tedja VANSTEENWEGEN, Pieter YU, Vincent F. |
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GUNAWAN, Aldy WIDJAJA, Audrey Tedja VANSTEENWEGEN, Pieter YU, Vincent F. |
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GUNAWAN, Aldy |
title |
Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm |
title_short |
Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm |
title_full |
Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm |
title_fullStr |
Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm |
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Vehicle routing problem with reverse cross-docking: An adaptive large neighborhood search algorithm |
title_sort |
vehicle routing problem with reverse cross-docking: an adaptive large neighborhood search algorithm |
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Institutional Knowledge at Singapore Management University |
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2020 |
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https://ink.library.smu.edu.sg/sis_research/6106 https://ink.library.smu.edu.sg/context/sis_research/article/7109/viewcontent/Gunawan2020_Chapter_VehicleRoutingProblemWithRever.pdf |
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