首页> 外文期刊>International Journal of Distributed Sensor Networks >Minimizing maximum cost in task coverage problem with multiple mobile sensors: A heuristic approach based on all-pairs shortest path
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Minimizing maximum cost in task coverage problem with multiple mobile sensors: A heuristic approach based on all-pairs shortest path

机译:使用多个移动传感器将任务覆盖问题的最大成本降至最低:基于全对最短路径的启发式方法

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We address a task coverage problem to cover all given tasks with a given number of mobile sensors. In this context, we consider tasks as certain points or regions that should be probed by sensors. Our work is to find initial tasks to deploy sensors in advance, and find an efficient set of search paths from the initial tasks that completely covers all tasks and minimizes the maximum cost among paths. This is a challenging issue for various sensor applications, particularly those related to time-critical missions, such as search and rescue operations. We propose an algorithm that selects a set of all-pairs shortest paths with fewer duplicated tasks and extends each path using remaining tasks while covering all tasks and avoiding cost increases. Experimental results demonstrate that the proposed algorithm provides efficient solutions compared to existing algorithms in terms of coverage and maximum path costs.
机译:我们解决任务覆盖问题,以使用给定数量的移动传感器覆盖所有给定任务。在这种情况下,我们将任务视为应该由传感器探测的某些点或区域。我们的工作是提前找到部署传感器的初始任务,并从初始任务中找到一组有效的搜索路径,以完全覆盖所有任务并最大程度地减少路径之间的最大成本。对于各种传感器应用来说,这是一个具有挑战性的问题,特别是那些与时间紧迫的任务有关的传感器,例如搜索和救援行动。我们提出了一种算法,该算法选择一组具有较少重复任务的全对最短路径,并使用剩余任务扩展每个路径,同时覆盖所有任务并避免成本增加。实验结果表明,与现有算法相比,该算法在覆盖范围和最大路径成本方面提供了有效的解决方案。

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