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Swarm intelligence based optimization and control of decentralized serial sensor networks

机译:基于群体智能的分布式串行传感器网络优化与控制

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In this paper threshold design and hierarchy management of serial sensor networks employed for distributed detection is accomplished using a hybrid of ant colony optimization and particle swarm optimization. The particle swarm optimization determines the optimal thresholds, decision rules for the sensors. The ant colony optimization algorithm determines the hierarchy of sensor decision communication, affecting the accuracy. The problem of hierarchy management is known as “who reports to whom?” problem in sensor networks. The new algorithm is tested on a suite of 10 heterogeneous sensors. Probabilistic measures including probability of error and Bayesian risk are adopted to evaluate the performance of the sensor network. The new sensor management methodology is compared to (a) Static hierarchy network, (b) a network with the best sensor at the top of the hierarchy and (c) Incrementally best hierarchy. Results show 40% performance improvements in terms of Bayesian risk value.
机译:在本文中,使用蚁群优化和粒子群优化的混合方法完成了用于分布式检测的串行传感器网络的阈值设计和层次管理。粒子群优化确定了传感器的最佳阈值和决策规则。蚁群优化算法确定传感器决策通信的层次结构,影响准确性。层次结构管理的问题称为“谁向谁报告?”传感器网络中的问题。新算法在一套10个异构传感器上进行了测试。采用包括误差概率和贝叶斯风险的概率度量来评估传感器网络的性能。将新的传感器管理方法与(a)静态层次结构网络,(b)在层次结构顶部具有最佳传感器的网络和(c)递增最佳层次结构进行比较。结果显示,就贝叶斯风险值而言,性能提高了40%。

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