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A robust topology control solution for the sink placement problem in WSNs

机译:解决WSN中接收器放置问题的强大拓扑控制解决方案

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摘要

Placing a certain number of sinks at appropriate locations in WSNs reduces the number of hops between a sensor and its sink resulting in less exchanged messages between nodes and consequently less energy consumption. Since finding the optimal number of the sinks to be added and their locations is an NP Hard problem, we propose in this paper, a topological level solution that uses a meta-heuristic based on Particle Swarm Optimization (PSO) to decide on the number of sinks and their locations; more specifically we use Discrete PSO (DPSO) with local search. Traffic Flow Analysis (TFA) is used to calculate the fitness function of the network defined as the maximum worst case delay. Since TFA is usually used to analyze networks with one sink, we present the extension that allows it to be used with multiple sinks. Furthermore, we formulated the problem, discretized it, and applied PSO while introducing local search to the inner workings of the algorithm. Extensive experiments were conducted to evaluate the efficiency of DPSO. DPSO was compared with Genetic Algorithm-based Sink Placement (GASP), which is considered the state-of-the-art in solving the multiple sink placement problem. In all scenarios, DPSO was 2 to 3 times faster than GASP. When compared with respect to delay, DPSO achieved less delay in most scenarios, except for few scenarios where it performed similar to GASP or a bit worst. Topologies with random as well as heavy tailed distribution were used in the experiments. Moreover, we present via simulation the substantial benefit of adding more sinks to a wireless network.
机译:将特定数量的接收器放置在WSN中的适当位置会减少传感器与其接收器之间的跃点数,从而导致节点之间交换的消息更少,从而减少能耗。由于找到要添加的汇的最佳数量及其位置是一个NP Hard问题,因此我们在本文中提出了一种拓扑级解决方案,该解决方案使用基于粒子群优化(PSO)的元启发式方法来确定接收点的数量。水槽及其位置;更具体地说,我们在本地搜索中使用离散PSO(DPSO)。流量分析(TFA)用于计算网络的适应度函数,定义为最大最坏情况延迟。由于TFA通常用于分析具有一个接收器的网络,因此我们提出了扩展,使其可以与多个接收器一起使用。此外,我们在将局部搜索引入算法内部工作的同时,提出了问题,对其进行了离散化,并应用了PSO。进行了广泛的实验以评估DPSO的效率。将DPSO与基于遗传算法的水槽放置(GASP)进行了比较,后者被认为是解决多水槽放置问题的最新技术。在所有情况下,DPSO均比GASP快2至3倍。与延迟相比,在大多数情况下,DPSO的延迟都较小,除了少数情况下,其性能与GASP相似或稍差一些。实验中使用了具有随机分布以及重尾分布的拓扑。此外,我们通过仿真展示了向无线网络添加更多接收器的巨大好处。

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