Mult-Depot Vehicle Routing Problem In Mango Distribution: A Case Study In Southern Of Vietnam
Abstract
The Mixed Integer Linear Programming by using Nearest Neighbor approach is used in
this study to address a mango distribution problem in Southern Vietnam. We provide
and formalize a model for a multi-product, multi-depot vehicle routing issue with a time
window and different mango size constraints for each vehicle. The problem's purpose is
to reduce the total cost. Customers' desires for various mango sizes are met by a variety
of goods. A Mixed Integer Linear Programming (MILP) paradigm is presented in this
study. The construct gap of MILP is measured when comparing the CPLEX to the
Nearest Neighbor approach. The computational findings reveal that Nearest Neighbor
approach performs better than CPLEX providing a 6.44% gap on average. Furthermore,
our suggested method may be used for comparable agricultural logistics in Vietnam and
throughout the world.