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Optimal Power Scheduling for Correlated Data Fusion in Wireless Sensor Networks via Constrained PSO

机译:通过约束PSO在无线传感器网络中进行相关数据融合的最佳功率调度

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Optimal power scheduling for distributed detection in a Gaussian sensor network is addressed for both independent and correlated observations. We assume amplify-and-forward local processing at each node. The wireless link between sensors and the fusion center is assumed to undergo fading and coefficients are assumed to be available at the transmitting sensors. The objective is to minimize the total network power to achieve a desired fusion error probability at the fusion center. For i.i.d. observations, the optimal power allocation is derived analytically in closed form. When observations are correlated, first, an easy to optimize upper bound is derived for sufficiently small correlations and the power allocation scheme is derived accordingly. Next, an evolutionary computation technique based on particle swarm optimization is developed to find the optimal power allocation for arbitrary correlations. The optimal power scheduling scheme suggests that the sensors with poor observation quality and bad channels should be inactive to save the total power expenditure of the system. It is shown that the probability of fusion error performance based on the optimal power allocation scheme outperforms the uniform power allocation scheme especially when either the number of sensors is large or the local observation quality is good.
机译:针对高斯传感器网络中的分布式检测的最佳功率调度,既针对独立观测也针对相关观测。我们假设在每个节点上进行放大转发本地处理。假定传感器与融合中心之间的无线链路正在衰减,并且假定在发射传感器处可用系数。目的是最小化总网络功率以在融合中心处实现期望的融合错误概率。对于我观察发现,最优功率分配以封闭形式通过分析得出。当观测值相关时,首先,针对足够小的相关性,得出易于优化的上限,并据此得出功率分配方案。接下来,开发了一种基于粒子群优化的进化计算技术,以找到任意相关性的最优功率分配。最佳功率调度方案表明,观察质量较差且通道较差的传感器应处于非活动状态,以节省系统的总功率消耗。结果表明,基于最优功率分配方案的融合错误性能概率优于统一功率分配方案,尤其是在传感器数量大或局部观测质量好的情况下。

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