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A novel distributed variational approximation method for density estimation in sensor networks

机译:传感器网络密度估计的一种新的分布式变分近似方法

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In this paper, a consensus filter based distributed variational Bayesian (CFBDVB) algorithm is developed for distributed density estimation. Sensor measurements are assumed to be statistically modeled by a finite mixture model for which the CFBDVB algorithm is used to estimate the parameters, including means, covariances and weights of components. This algorithm is based on three steps: (1) calculating local sufficient statistics at every node, (2) estimating a global sufficient statistics vector using a consensus filter, (3) updating parameters of the finite mixture model based on the global sufficient statistics vector. Scalability and robustness are two advantages of the proposed algorithm. Convergence of the CFBDVB algorithm is also proved using Robbins-Monro stochastic approximation method. Finally, to verify performance of CFBDVB algorithm, we perform several simulations of sensor networks. Simulation results are very promising. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于共识滤波器的分布式变分贝叶斯算法(CFBDVB),用于分布式密度估计。假定传感器测量是通过有限混合模型进行统计建模的,对于该模型,CFBDVB算法用于估计参数,包括均值,协方差和分量权重。该算法基于以下三个步骤:(1)在每个节点上计算局部足够统计量;(2)使用共识滤波器估计全局足够统计量向量;(3)基于全局足够统计量向量更新有限混合模型的参数。可伸缩性和鲁棒性是该算法的两个优点。还使用Robbins-Monro随机逼近方法证明了CFBDVB算法的收敛性。最后,为了验证CFBDVB算法的性能,我们对传感器网络进行了几次仿真。仿真结果非常有希望。 (C)2016 Elsevier Ltd.保留所有权利。

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