无线传感器网络有效覆盖的混合学习算法

Yanjing Sun, Li Li
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引用次数: 10

摘要

覆盖是无线传感器网络需要解决的主要问题之一。在一些监测区域,情况非常恶劣,情况往往会突然发生,无线传感器网络的节点需要根据监测事件动态快速地改变自己的位置并自动重新覆盖,以达到更好的监测效果。目前的算法往往局限于实现固定区域的最优覆盖。结合人工神经网络,将改进的带效用准则的生长神经气体算法应用于无线传感器网络中,尤其在特殊环境下,能够快速响应变化区域的再覆盖。为了加快学习过程,我们将遗传算法和遗传算法结合起来,结合遗传算法的进化能力和遗传算法的概率搜索能力。仿真结果表明,与增长神经气体算法、效用准则增长神经气体算法和改进的GNG算法相比,改进的GNG- u算法减少了大量冗余节点,提高了网络的移动性,加快了收敛速度,达到了最优的再覆盖。
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Hybrid Learning Algorithm for Effective Coverage in Wireless Sensor Networks
Coverage is one of the main problems to be solved for wireless sensor networks (WSN). In some monitoring regions, the condition is very bad and worse cases often suddenly occur, the nodes of wireless sensor network need to dynamically change their position quickly and automatically re-coverage according to the monitoring events to achieve better monitoring results. The current algorithms are often limited to realize the optimal coverage of fixed region. Combined with artificial neural network, putting the improved growing neural gas with utility criterion algorithm into wireless sensor network, the network can rapid re-coverage with respond to the changed region especially for special environments. In order to speed the learning procedure, we use GA and SA which combines the ability of evolution of GA and probability searching of SA. The simulation results show that, compared with growing neural gas algorithm, growing neural gas with utility criterion algorithm and improved GNG algorithm, the improve GNG-U algorithm can reduce a lot of redundant nodes, improve mobility of the network, accelerate the rate of convergence and arrive optimal re-coverage.
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