基于改进优化的WSN节点定位方案

M. Senthil Murugan, P. Ravindranath, K. S. Jayareka, T. Sundareswaran, Charanjeet Singh, Arunmurugan Subbaiyan
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引用次数: 0

摘要

传感器节点的位置对于WSN的几种应用至关重要,包括环境感知、搜索和救援、地理路由和跟踪等。无线传感器系统中单个传感器终端的定位精度对网络的整体效率有很大的影响。利用从各种测量中收集的关于锚节点位置的信息来确定未知目标节点的位置被称为定位。这是一个被归类为np困难的问题,这意味着它不能用经典的确定性方法来解决。为了克服无线传感器网络中的这一困难,提出了一种增强版的群体智能技术,称为鲸鱼优化方法。这种实现使用基于准反射的学习方法,解决了原始鲸鱼优化方法的问题。为了确保所提出的元启发式算法的性能与现有的最先进的元启发式算法一样好,使用相同的网络架构和实验设置对其进行评估。本文提出的方法利用高斯修正的RSSI来实现更精确的距离读取,利用新的鲸鱼优化算法来优化节点的定位,从而提高定位精度,弥补了两种RSSI测距模型定位算法的不足。基于20个单独的基准函数测试结果,升级后的鲸鱼算法优于鲸鱼优化方法和其他群体智能系统。建议的定位算法比原来的RSSI方法提供更精确的定位。本文提到,在定位WSN节点方面,集群智能算法比目前实现的RSSI具有显著的优势,并且与各种集群智能方法相比,本文所描述的改进算法在倾向于满足实际应用的定位需求方面具有更多的优势。仿真结果表明,该方法比基线鲸鱼优化技术和其他领先的元启发式方法具有更好的定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Optimization-based Node Localization Scheme for WSN
The location of a sensor node is crucial for several uses of WSN, including environmental sensing, search and rescue, geographical routing and tracking, and so on. The accuracy with which individual sensor terminals in a wireless sensor system can be located has a substantial bearing on the network's overall effectiveness. Using information about the locations of anchor nodes gathered from a variety of measures to pinpoint the unknown target nodes' placements is known as localization. This is a problem classed as NP-hard, which means it cannot be solved using classical deterministic methods. To overcome this difficulty in wireless sensor networks, presented an enhanced version of a swarm intelligence technique called the whale optimization method. This implementation, using a quasi-reflected-based learning method, fixes the problems with the original whale optimization approach. In order to ensure that the proposed metaheuristic performs as well as existing state-of-the-art metaheuristics, it is evaluated using the same network architecture and experimental settings. Proposed method use a Gaussian-modified RSSI to achieve a more accurate reading of the range and a new whale optimization algorithm to optimize the positioning of the nodes to boost the positioning accuracy, both of which are designed to compensate for the shortcomings of the positioning algorithm of both Received signal strength indicator (RSSI) ranging model. Based on the results of 20 separate benchmark function tests, the upgraded whale algorithm outperforms the whale optimization method and other swarm intelligence systems. The suggested location algorithm provides more precise placement than the original RSSI method. It is mentioned that the cluster intelligence algorithm has significant benefits over the currently implemented RSSI in positioning WSN nodes, and the improved algorithm that is described in this work has even more benefits compared to various cluster intelligence methods in tends to work the locating needs of real-world applications. The developed approach, as shown by simulation results, achieves better localization accuracy than the baseline whale optimization technique and other leading metaheuristics.
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