基于广义蚁群优化的自适应聚类无线传感器网络动态路由

Zhengmao Ye, Habib Mohamadian
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引用次数: 59

摘要

无线传感器网络(WSNs)使用电池供电的传感器节点进行传感,因此能源效率对延长寿命至关重要。性能取决于能耗、延迟和可靠性之间的权衡。数据聚合是消除冗余、降低传输成本、节约能源的基本途径。提出了基于动态聚类的路由,通过自适应算法获得良好的性能。应用广义蚁群算法提高能量约束下传感器节点的可靠寿命。将每个传感器节点建模为一只人工蚂蚁,将动态路由建模为蚂蚁觅食。当从源到汇的节能通道得到保障时,蚂蚁信息素就会释放出来。路径发现、数据聚集和信息丢失被建模为信息素扩散、积累和蒸发的过程。每个传感器节点估计剩余能量并动态计算概率来选择最优通道以延长wsn的寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Clustering based Dynamic Routing of Wireless Sensor Networks via Generalized Ant Colony Optimization

Wireless sensor networks (WSNs) use battery-powered sensor nodes for sensing, thus the energy efficiency is critical to extend the lifespan. The performance depends on the trade-off among energy consumption, latency and reliability. Data aggregation is a fundamental approach to eliminate redundancy and minimize transmission cost so as to save energy. Dynamic clustering based routing is proposed to achieve good performance via adaptive algorithms. The generalized Ant Colony Optimization (ACO) is applied to increase the reliable lifespan of sensor nodes with energy constraints. Each sensor node is modeled as an artificial ant and dynamic routing is modeled as ant foraging. The ant pheromone is released when an energy efficient channel from the source to sink is secured. Route discovery, data aggregation and information loss are modeled as the processes of pheromone diffusion, accumulation and evaporation. Each sensor node estimates the residual energy and dynamically calculates probabilities to select an optimal channel to extend the lifespan of WSNs.

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