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Pareto-based evolutionary computational approach for wireless sensor placement

机译:基于帕累托的无线传感器放置进化计算方法

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Wireless sensor networks (WSNs) have become increasingly appealing in recent years for the purpose of data acquisition, surveillance, event monitoring, etc. Optimal positioning of wireless sensor nodes is an important issue for small networks of relatively expensive sensing devices. For such networks, the placement problem requires that multiple objectives be met. These objectives are usually conflicting, e.g. achieving maximum coverage and maximum connectivity while minimizing the network energy cost. A flexible algorithm for sensor placement (FLEX) is presented that uses an evolutionary computational approach to solve this multiobjective sensor placement optimization problem when the number of sensor nodes is not fixed and the maximum number of nodes is not known a priori. FLEX starts with an initial population of simple WSNs and complexifies their topologies over generations. It keeps track of new genes through historical markings, which are used in later generations to assess two networks' compatibility and also to align genes during crossover. It uses Pareto-dominance to approach Pareto-optimal layouts with respect to the objectives. Speciation is employed to aid the survival of gene innovations and facilitate networks to compete with similar networks. Elitism ensures that the best solutions are carried over to the next generation. The flexibility of the algorithm is illustrated by solving the deviceode placement problem for different applications like facility surveillance, coverage with and without obstacles, preferential surveillance, and forming a clustering hierarchy.
机译:近年来,出于数据采集,监视,事件监视等目的,无线传感器网络(WSN)变得越来越有吸引力。无线传感器节点的最佳定位对于相对昂贵的传感设备的小型网络来说是重要的问题。对于这样的网络,放置问题需要满足多个目标。这些目标通常是矛盾的,例如实现最大的覆盖范围和最大的连接性,同时最大程度地降低网络能源成本。提出了一种灵活的传感器放置算法(FLEX),该算法使用进化计算方法解决了传感器节点数量不固定且节点的最大数量未知的先验情况下的多目标传感器放置优化问题。 FLEX首先是简单的WSN的初始填充,并使其世代相继变得复杂。它通过历史标记跟踪新基因,这些标记在以后的世代用于评估两个网络的兼容性,并在交叉过程中对齐基因。它使用帕累托支配性来实现相对于目标的帕累托最优布局。物种形成被用来帮助基因创新的生存,并促进网络与类似网络竞争。 Elitism确保将最好的解决方案延续到下一代。通过针对不同的应用(例如设施监视,有无障碍物的覆盖,优先监视以及形成聚类层次结构)解决设备/节点放置问题来说明算法的灵活性。

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