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Efficient Consideration of Soft Time Windows in a Large Neighborhood Search for the Districting and Routing Problem for Security Control

机译:有效考虑大型邻居中的软时间窗口,以查找安全控制的分区和路由问题

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For many companies it is important to protect their physical and intellectual property in an efficient and economically viable manner. Thus, specialized security companies are delegated to guard private and public property. These companies have to control a typically large number of buildings, which is usually done by teams of security guards patrolling different sets of buildings. Each building has to be visited several times within given time windows and tours to patrol these buildings are planned over a certain number of periods (days). This problem is regarded as the Districting and Routing Problem for Security Control. Investigations have shown that small time window violations do not really matter much in practice but can drastically improve solution quality. When softening time windows of the original problem, a new subproblem arises where the minimum time window penalty for a given set of districts has to be found for each considered candidate route: What are optimal times for the individual visits of objects that minimize the overall penalty for time window violations? We call this Optimal Arrival Time Problem. In this paper, we investigate this sub-problem in particular and first give an exact solution approach based on linear programming. As this method is quite time-consuming we further propose a heuristic approach based on greedy methods in combination with dynamic programming. The whole mechanism is embedded in a large neighborhood search (LNS) to seek for solutions having minimum time window violations. Results show that using the proposed heuristic method for determining almost optimal starting times is much faster, allowing substantially more LNS iterations yielding in the end better overall solutions.
机译:对于许多公司而言,以有效且经济可行的方式保护其物理和知识产权非常重要。因此,委派了专门的保安公司来保护私人和公共财产。这些公司必须控制通常为数众多的建筑物,这通常是由巡逻不同建筑物的保安人员团队来完成的。必须在给定的时间范围内对每个建筑物进行几次访问,并计划在一定时期(天)内巡视这些建筑物。此问题被视为安全控制的分区和路由问题。调查显示,在实践中,小的违反时间范围的问题实际上并没有多大关系,但可以大大提高解决方案的质量。当软化原始问题的时间窗口时,会出现一个新的子问题,其中必须为每个考虑的候选路线找到给定区域集的最小时间窗口惩罚:什么是对对象进行单独访问的最佳时间,以使总惩罚最小化对于时间窗违规?我们称此为最佳到达时间问题。在本文中,我们将特别研究该子问题,并首先给出一种基于线性规划的精确解决方案。由于此方法非常耗时,因此我们进一步提出了一种基于贪婪方法与动态规划相结合的启发式方法。整个机制被嵌入到大型邻域搜索(LNS)中,以寻求具有最小时间窗违规的解决方案。结果表明,使用提议的启发式方法来确定几乎最佳的启动时间要快得多,从而允许进行更多的LNS迭代,最终产生更好的整体解决方案。

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