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Experimental analysis of heuristic solutions for the moving target traveling salesman problem applied to a moving targets monitoring system

机译:应用于移动目标监控系统的移动目标旅行商问题启发式解决方案的实验分析

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The Traveling Salesman Problem (TSP) is an important problem in computer science which consists in finding a path linking a set of cities so that each of then can be visited once, before the traveler comes back to the starting point. This is highly relevant because several real world problems can be mapped to it. A special case of TSP is the one in which the cities (the points to be visited) are not static as the cities, but mobile, changing their positions as the time passes. This variation is known as Moving Target TSP (MT-TSP). Emerging systems for crowd monitoring and control based on unmanned aerial vehicles (UAVs) can be mapped to this variation of the TSP problem, as a number of persons (targets) in the crowd can be assigned to be monitored by a given number of UAVs, which by their turn divide the targets among them. These target persons have to be visited from time to time, in a similar way to the cities in the traditional TSP. Aiming at finding a suitable solution for this type of crowd monitoring application, and considering the fact that exact solutions are too complex to perform in a reasonable time, this work explores and compares different heuristic methods for the intended solution. The performed experiments showed that the Genetic Algorithms present the best performance in finding acceptable solutions for the problem in restricted time and processing power situations, performing better compared to Ant Colony Optimization and Simulated Annealing Algorithms. (C) 2019 Published by Elsevier Ltd.
机译:旅行推销员问题(TSP)是计算机科学中的一个重要问题,在于找到一条链接一组城市的路径,以便在旅行者返回起点之前可以对每个城市进行一次访问。这是高度相关的,因为可以将一些实际问题映射到该问题。 TSP的一种特殊情况是,城市(要访问的点)不是像城市一样的静止,而是随着时间的流逝而变化的位置。这种变化称为移动目标TSP(MT-TSP)。可以将基于无人飞行器(UAV)的用于人群监视和控制的新兴系统映射到TSP问题的这种变化,因为可以将人群中的人数(目标)分配给指定数量的无人机,以便对其进行监视,依次将目标划分到其中。与传统TSP中的城市类似,必须不时拜访这些目标人群。为了找到适合此类人群监控应用程序的解决方案,并考虑到精确的解决方案过于复杂以致于无法在合理的时间内执行的事实,本工作针对预期的解决方案探索并比较了不同的启发式方法。进行的实验表明,遗传算法在限制时间和处理能力的情况下找到问题的可接受解决方案时表现出最佳性能,与蚁群优化和模拟退火算法相比,性能更好。 (C)2019由Elsevier Ltd.发布

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