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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >A parallel WOA with two communication strategies applied in DV-Hop localization method
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A parallel WOA with two communication strategies applied in DV-Hop localization method

机译:一个平行的WOA,具有两个通信策略,应用于DV-Hop定位方法

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Wireless sensor network (WSN) can effectively help us monitor the surrounding environment and prevent the occurrence of some natural disasters earlier, but we can only get the information of the surrounding environment correctly if we know the locations of nodes. How to know the exact positions of nodes is a strict challenge in WSN. Intelligent computing algorithms have been developed in recent years. They easily solve complex optimization problems, especially for those that cannot be modeled mathematically. This paper proposes a novel algorithm, named parallel whale optimization algorithm (PWOA). It contains two information exchange strategies between groups, and it significantly enhances global search ability and population diversity of the original whale optimization algorithm (WOA). Also, the algorithm is adopted to optimize the localization of WSN. Twenty-three mathematical optimization functions are accustomed to verifying the efficiency and effectiveness of the novel approach. Compared with some existing intelligent computing algorithms, the proposed PWOA may reach better results.
机译:无线传感器网络(WSN)可以有效地帮助我们监控周围环境,并预防一些自然灾害的发生早期,但如果我们知道节点的位置,我们只能在正确获取周围环境的信息。如何知道节点的确切位置是WSN中的严格挑战。近年来开发了智能计算算法。它们很容易解决复杂的优化问题,特别是对于那些无法在数学建模的那些。本文提出了一种新颖的算法,命名为并联鲸优化算法(PWOA)。它包含两组之间的两个信息交换策略,并且它显着提高了原始鲸鲸优化算法(WOA)的全球搜索能力和人口分集。此外,采用该算法优化WSN的定位。习惯于验证新方法的效率和有效性二十三个数学优化功能。与一些现有的智能计算算法相比,所提出的PWOA可能会达到更好的结果。

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