首页> 外文会议>Conference on Digital Wireless Communications VI; 20040412-20040413; Orlando,FL; US >A distributed evolutionary algorithmic approach to the least-cost connected constrained sub-graph and power control problem
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A distributed evolutionary algorithmic approach to the least-cost connected constrained sub-graph and power control problem

机译:成本最小的连接受限子图和功率控制问题的分布式进化算法

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When wireless sensors are capable of variable transmit power and are battery powered, it is important to select the appropriate transmit power level for the node. Lowering the transmit power of the sensor nodes imposes a natural clustering on the network and has been shown to improve throughput of the network. However, a common transmit power level is not appropriate for inhomogeneous networks. A possible fitness-based approach, motivated by an evolutionary optimization technique, Particle Swarm Optimization (PSO) is proposed and extended in a novel way to determine the appropriate transmit power of each sensor node. A distributed version of PSO is developed and explored using experimental fitness to achieve an approximation of least-cost connectivity.
机译:当无线传感器具有可变的发射功率并由电池供电时,为节点选择适当的发射功率级别非常重要。降低传感器节点的发射功率会在网络上形成自然集群,并且已显示出可提高网络吞吐量。但是,通用的发射功率水平不适用于不均匀的网络。提出了一种可能的基于适应度的方法,该方法受进化优化技术(粒子群优化(PSO))的启发,并以一种新颖的方式进行了扩展,以确定每个传感器节点的适当发射功率。使用实验适用性开发并探索了PSO的分布式版本,以实现成本最低的连接的近似值。

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