Vehicle routing in last-mile delivery plays a decisive role in the new world of people’s lifestyles. At present, a growing number of people order their needs online, and this forces companies to employ innovative delivery logistics to reduce their last-mile shipping costs. The goal is to minimize the cost of travel that depends on the Euclidean distance between customers. Companies require solving vehicle routing problems (VRP) in a reasonable time. In this paper, a new approach is introduced that solves the multi-depot vehicle routing problem (MDVRP) in real-time. We propose a new method by clustering and decomposing the main problem into smaller ones using a tuning parameter α . This approach could reduce the solution time noticeably (up to 95%) while the shipping cost is still reasonable.
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Zajkani, M. A., Rahimi Baghbadorani, R., & Haeri, M. (2023). Using a Tuning Parameter to Compromise Computation Time and Shipping Cost in an MDVRP. AUT Journal of Electrical Engineering, 55(Issue 3 (Special Issue)), 323-332. doi: 10.22060/eej.2022.21404.5474
MLA
Mohammad Amin Zajkani; Reza Rahimi Baghbadorani; Mohammad Haeri. "Using a Tuning Parameter to Compromise Computation Time and Shipping Cost in an MDVRP". AUT Journal of Electrical Engineering, 55, Issue 3 (Special Issue), 2023, 323-332. doi: 10.22060/eej.2022.21404.5474
HARVARD
Zajkani, M. A., Rahimi Baghbadorani, R., Haeri, M. (2023). 'Using a Tuning Parameter to Compromise Computation Time and Shipping Cost in an MDVRP', AUT Journal of Electrical Engineering, 55(Issue 3 (Special Issue)), pp. 323-332. doi: 10.22060/eej.2022.21404.5474
VANCOUVER
Zajkani, M. A., Rahimi Baghbadorani, R., Haeri, M. Using a Tuning Parameter to Compromise Computation Time and Shipping Cost in an MDVRP. AUT Journal of Electrical Engineering, 2023; 55(Issue 3 (Special Issue)): 323-332. doi: 10.22060/eej.2022.21404.5474