Derivative-Free Distributed Filtering for MIMO Robotic Systems under Delays and Packet Drops
[摘要] This paper presents an approach to distributed state estimation-based control of nonlinear MIMO systems, capable of incorporating delayed measurements in the estimation algorithm while also being robust to packet losses. First, the paper examines the problem of distributed nonlinear filtering over a communication/sensors network, and the use of the estimated state vector in a control loop. As a possible filtering approach, an extended information filter (EIF) is proposed. The extended information filter requires the computation of Jacobians which in the case of high order nonlinear dynamical systems can be a cumbersome procedure, while it also introduces cumulative errors to the state estimation due to the approximative linearization performed in the Taylor series expansion of the system's nonlinear model. To overcome the aforementioned weaknesses of the extended information filter, a derivative-free approach to extended information filtering has been proposed. Distributed filtering is now based on a deri...
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[效力级别] [学科分类] 自动化工程
[关键词] Distributed Filtering;Derivative-Free Nonlinear Kalman Filtering;State Estimation-Based Control;Nonlinear MIMO Dynamical Systems;Robotic Manipulators;Networked Control Systems;Communication Delays;Packet Drops [时效性]