Brain storm optimization algorithm for full area coverage of wireless sensor networks

Haoyu Zhu, Yuhui Shi
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引用次数: 9

Abstract

Coverage problem is a fundamental issue in designing efficient wireless sensor networks, in which both coverage rate and energy consumption should be considered. A brain storm optimization algorithm is a swarm intelligence algorithm which is inspired by the human brainstorming process. This paper will focus on the application of the brain storm optimization algorithm in full coverage problems of wireless sensor networks. The full coverage problems are divided into two types: problems either with fixed or flexible number of activated sensor nodes. Binary detection model and grid based strategy will be used in describing the mathematic model of the full coverage problem, which will be applied to test the effectiveness of the brain storm optimization algorithm for solving coverage problems of wireless sensor networks in different areas. Experimental results on irregular areas even with obstacles illustrate the efficiency and effectiveness of the brain storm optimization algorithm for solving full coverage problems of wireless sensor networks. In addition, if the number of activated sensor nodes is flexible, with an appropriate weight coefficient, the brain storm optimization algorithm can obtain a reasonable number of sensor nodes to realize full coverage.
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无线传感器网络全区域覆盖的头脑风暴优化算法
覆盖问题是设计高效无线传感器网络的一个基本问题,既要考虑网络的覆盖率,又要考虑网络的能耗。头脑风暴优化算法是一种受人类头脑风暴过程启发的群体智能算法。本文将重点研究头脑风暴优化算法在无线传感器网络全覆盖问题中的应用。全覆盖问题分为两类:激活传感器节点数量固定的问题和激活传感器节点数量灵活的问题。将采用二值检测模型和基于网格的策略描述全覆盖问题的数学模型,并将其应用于测试头脑风暴优化算法在不同区域解决无线传感器网络覆盖问题的有效性。在有障碍物的不规则区域上的实验结果表明,头脑风暴优化算法在解决无线传感器网络全覆盖问题上的效率和有效性。此外,如果激活的传感器节点数量是灵活的,通过适当的权重系数,头脑风暴优化算法可以获得合理的传感器节点数量,实现全覆盖。
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