Modeling Quartiles and Variance of Optimal Traveling Salesman Tour Lengths

Hongtai Yang, Xiuqin Liang, Zhaolin Zhang, Xu Zhang, Malik Muneeb Abid, Yugang Liu
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Abstract

Traveling Salesman Problem (TSP) plays an important role in research and has many applications in the field of transportation and logistics. Most studies focus on developing algorithms to find the shortest path while some studies explore the average length of the shortest paths. However, the quartiles and variance of the shortest paths have not been studied so far. The quartiles and variance of the shortest paths are important because they can give information about the travel/delivery time reliability and the best and worst travel/delivery time scenario, when the tour can be regarded as TSP. This study performs experiments to find the shortest path connecting n customers, which are generated randomly in a specified service area, using genetic algorithm. The service areas considered include equilateral triangle, rectangle with ratio of length and width ranging from 1 to 8, regular hexagon, and circle. The number of customers considered range from 10 to 100 with an interval of 10. In each experiment, the customers are generated randomly for 500 times. The first, second and third quartiles as well as the variance of the 500 shortest paths have been recorded. Subsequently, regression models have been developed to estimate quartiles and variance using number of customers and parameters of service area. R squares of the developed models are all above 0.96, indicating very good fit. The constructed models can be used to estimate the travel time variance and reliability.
最优旅行推销员行程长度的四分位数和方差建模
旅行商问题(TSP)在交通运输和物流领域有着重要的研究地位和广泛的应用。大多数研究集中在开发寻找最短路径的算法,而一些研究则探索最短路径的平均长度。然而,到目前为止,对最短路径的四分位数和方差尚未进行研究。最短路径的四分位数和方差很重要,因为它们可以提供关于旅行/交付时间可靠性和最佳和最差旅行/交付时间场景的信息,当旅行可以被视为TSP时。本研究利用遗传算法,在指定的服务区域内随机生成n个顾客,寻找连接n个顾客的最短路径。考虑的服务区域包括等边三角形、长宽比为1 ~ 8的矩形、正六边形和圆形。考虑的客户数量范围从10到100,间隔为10。在每个实验中,客户随机生成500次。记录了第一、第二和第三四分位数以及500条最短路径的方差。随后,我们开发了回归模型,利用顾客数量和服务区域的参数来估计四分位数和方差。所开发模型的R平方均在0.96以上,拟合良好。所构建的模型可用于估计行程时间方差和可靠性。
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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