Distributed Sparse Identification for Stochastic Dynamic Systems under Cooperative Non-Persistent Excitation Condition

Die Gan, Zhixin Liu
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Abstract

This paper considers the distributed sparse identification problem over wireless sensor networks such that all sensors cooperatively estimate the unknown sparse parameter vector of stochastic dynamic systems by using the local information from neighbors. A distributed sparse least squares algorithm is proposed by minimizing a local information criterion formulated as a linear combination of accumulative local estimation error and L_1-regularization term. The upper bounds of the estimation error and the regret of the adaptive predictor of the proposed algorithm are presented. Furthermore, by designing a suitable adaptive weighting coefficient based on the local observation data, the set convergence of zero elements with a finite number of observations is obtained under a cooperative non-persistent excitation condition. It is shown that the proposed distributed algorithm can work well in a cooperative way even though none of the individual sensors can fulfill the estimation task. Our theoretical results are obtained without relying on the independency assumptions of regression signals that have been commonly used in the existing literature. Thus, our results are expected to be applied to stochastic feedback systems. Finally, the numerical simulations are provided to demonstrate the effectiveness of our theoretical results.
协同非持久激励条件下随机动力系统的分布稀疏辨识
本文研究了无线传感器网络中的分布式稀疏辨识问题,即所有传感器利用邻居的局部信息协同估计随机动态系统的未知稀疏参数向量。提出了一种分布式稀疏最小二乘算法,该算法将局部估计误差与l_1正则化项线性组合而成的局部信息准则最小化。给出了该算法估计误差的上界和自适应预测器的遗憾。此外,通过设计合适的自适应加权系数,在非持续性协同激励条件下,得到了有限观测数下零元的集合收敛性。结果表明,在单个传感器均无法完成估计任务的情况下,分布式算法仍能很好地协同工作。我们的理论结果是不依赖于回归信号的独立性假设,已在现有文献中普遍使用。因此,我们的结果有望应用于随机反馈系统。最后,通过数值模拟验证了理论结果的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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