Domain decomposition methods in the distributed estimation of spatially distributed processes with mobile sensors

M. Demetriou
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引用次数: 4

Abstract

This paper considers the state estimation of spatially distributed processes via the employment of mobile sensors. In order to reduce the computational demands, a domain decomposition method is utilized and which decomposes the spatial domain into two subdomains. The estimator in the inner domain implements a hybrid Kalman filter with a mobile sensor, whereas the outer subdomain implements a naive observer. Coupling conditions at the inner/outer boundary serve as a means to exchange information between the two estimators and which constitute a consensus protocol. The motion of the mobile sensor is based on a spatial gradient scheme and serves as a further means of reducing the computational load associated with the solution to large scale differential Riccati equations. The proposed scheme is further extended to collaborative distributed estimation in which multiple mobile sensors are enforcing another level of consensus protocol in order to penalize the differences between their state estimates. Extensive numerical simulations of a one-dimensional parabolic partial differential equation are presented to further demonstrate the multi-level computational savings associated with the use of domain decomposition in state estimation of spatially distributed processes with mobile sensors.
基于移动传感器的空间分布过程分布估计中的域分解方法
本文考虑利用移动传感器对空间分布过程进行状态估计。为了减少计算量,采用了域分解方法,将空间域分解为两个子域。内域的估计量实现了带有移动传感器的混合卡尔曼滤波器,而外子域实现了朴素观测器。内/外边界的耦合条件作为两个估计器之间交换信息的手段,并构成共识协议。移动传感器的运动是基于空间梯度格式,并作为进一步的手段,减少与求解大规模的微分里卡蒂方程相关的计算负荷。该方案进一步扩展到协作分布式估计,其中多个移动传感器执行另一级别的共识协议,以惩罚其状态估计之间的差异。提出了一维抛物型偏微分方程的广泛数值模拟,以进一步证明在移动传感器的空间分布过程的状态估计中使用域分解相关的多级计算节省。
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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