Route optimization via improved ant colony algorithm with graph network

Patil N. Siddalingappa, P. Basavaraj, Preethi Basavaraj, Premasudha B. Gowramma
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Abstract

Route optimization problem using vehicle routing problem (VRP) and time window constraint is explained as finding paths for a finite count of vehicles to provide service to a huge number of customers and hence, optimizing the path in a given duration of the time window. The vehicles in the loop have restricted intake of capacity. This path initiates from the depot, delivers the goods, and stops at the depot. Each customer is to serve exactly once. If the arrival of the vehicle is before the time window “opens” or when the time window “closes,” there will be waiting for cost and late cost. The challenge involved over here is to scheduling visits to customers who are only available during specific time windows. Ant colony optimization (ACO) algorithm is a meta-heuristic algorithm stimulated by the growing behaviour of real ants. In this paper, we combine the ACO algorithm with graph network henceforth increasing the number of vehicles in a particular depot for increasing the efficiency for timely delivery of the goods in a particular time width. This problem is solved by, an efficient technique known as the ACO+graph algorithm.
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基于改进蚁群算法的图网络路径优化
利用车辆路径问题(VRP)和时间窗口约束的路径优化问题被解释为为有限数量的车辆寻找路径,从而为大量的客户提供服务,从而在给定的时间窗口内优化路径。环线中的车辆的进气能力受到限制。这条路径从仓库开始,交付货物,并在仓库停止。每位顾客只能服务一次。如果车辆到达时间在时间窗口“打开”之前或时间窗口“关闭”之前,则存在等待成本和延迟成本。这里涉及的挑战是安排只在特定时间窗口内可用的客户访问。蚁群优化算法是一种基于真实蚂蚁生长行为的元启发式算法。本文将蚁群算法与图网络相结合,通过增加特定仓库的车辆数量来提高在特定时间宽度内及时交货的效率。这个问题是通过一种被称为蚁群+图算法的有效技术来解决的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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