Intervention schedule optimization with travel time minimization for a Value-Added Reseller by solving the Capacitated Vehicle Routing Problem

IF 6.8 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
E. De Kuyffer , W. Joseph , L. Martens , T. De Pessemier
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引用次数: 0

Abstract

With the significant increase of service providing companies and the option of in home installation or maintenance, the importance of finding the optimal planning for the workers has risen accordingly. Global warming, high fuel prices, and important labor costs call for the need to minimize travel and working time and reduce the impact on the environment. In this paper, the CVRP is solved to establish a planning of interventions, being installation and maintenance, at customers of a value-added reseller (VAR). The goal is to minimize total travel time, maximize labor time per day, combine jobs that need two workers in the same van, and to reduce emissions. In contrast to previous research on routing optimization, limits are set to both the working time and the sum of the working time plus the travel time. In addition, it centralizes installations that need two workers on the same route, further minimizing the use of vans. As a result, scheduling becomes faster, more accurate, and scalable, leading to a significant reduction in overall asset and labor cost, and to less CO2 emission, thus cleaner logistics. This intervention planning is compared with the random planning and planning proposed by an expert planner. Applying our algorithm on various configurations of 16 to 82 customers led – in a time span of seconds – to a relative gain of 3% for the smallest application and up to 38.6% for the largest one, compared to the time-consuming planning made by the expert human planner. Moreover, to visit 82 customers 3 less vehicles are needed (21 instead of 24), in comparison to the human made schedule.
求解有容车辆路径问题的增值经销商行程时间最小化干预调度优化
随着服务提供公司的显著增加和在家安装或维护的选择,为工人找到最佳规划的重要性也相应上升。全球变暖、高油价和重要的劳动力成本要求人们必须尽量减少旅行和工作时间,减少对环境的影响。本文解决了CVRP问题,建立了增值经销商(VAR)客户干预措施的安装和维护计划。其目标是最小化总旅行时间,最大化每天的劳动时间,将需要两名工人在同一辆货车上的工作结合起来,并减少排放。与以往的路线优化研究不同的是,本文对工作时间和工作时间加出行时间的总和都设置了限制。此外,它还将需要两名工人的设备集中在同一条路线上,进一步减少了货车的使用。因此,调度变得更快、更准确、更可扩展,从而显著降低了总资产和劳动力成本,减少了二氧化碳排放,从而实现了更清洁的物流。将该干预规划与随机规划和专家规划进行了比较。将我们的算法应用于16到82个客户的各种配置,在几秒钟的时间内,最小的应用程序的相对增益为3%,最大的应用程序的相对增益为38.6%,相比之下,由专家规划人员进行耗时的规划。此外,与人工制定的计划相比,访问82个客户所需的车辆减少了3辆(21辆而不是24辆)。
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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来源期刊
CiteScore
8.60
自引率
0.00%
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