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Derivative-Free Distributed Filtering for MIMO Robotic Systems under Delays and Packet Drops

机译:时延和丢包情况下的MIMO机器人系统无导数分布式滤波

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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...
机译:本文提出了一种基于分布状态估计的非线性MIMO系统控制方法,该方法能够将延迟的测量结果纳入估计算法,同时还对数据包丢失具有鲁棒性。首先,本文研究了在通信/传感器网络上进行分布式非线性滤波的问题,以及在控制回路中估计状态向量的使用。作为一种可能的过滤方法,提出了一种扩展信息过滤器(EIF)。扩展信息滤波器需要计算雅可比矩阵,这对于高阶非线性动力系统可能是一个繁琐的过程,同时由于系统非线性的泰勒级数展开中执行的近似线性化,还会将累积误差引入状态估计模型。为了克服扩展信息过滤器的上述缺点,已经提出了一种无导数的扩展信息过滤方法。分布式过滤现在基于规范

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