首页> 外文会议>IEE Colloquium on Why aren't we Training Measurement Engineers?, 1992 >Filtering of Differential Nonlinear Systems via a Carleman Approximation Approach; 44th IEEE Conf. on Decision and Control & European Control Conference (CDC-ECC 2005)
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Filtering of Differential Nonlinear Systems via a Carleman Approximation Approach; 44th IEEE Conf. on Decision and Control & European Control Conference (CDC-ECC 2005)

机译:通过卡尔曼近似方法对微分非线性系统进行滤波;第44届IEEE会议决策与控制与欧洲控制会议(CDC-ECC 2005)

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This paper deals with the state estimation problem for a stochastic nonlinear differential system driven by a standard Wiener process. The solution here proposed is a linear filtering algorithm and is achieved by means of the Carleman approximation scheme applied to both the state and the measurement nonlinear equations. Such a procedure allows to define an approximate representation by means of a suitable bilinear system for which a filtering algorithm is available from literature. Numerical simulations support the theoretical results and show a rather interesting improvement in terms of sampled error covariance of the proposed approach with respect to the classical Kalman-Bucy filter applied to the linearized differential system.
机译:本文针对由标准维纳过程驱动的随机非线性微分系统的状态估计问题。此处提出的解决方案是一种线性滤波算法,并且是通过将Carleman逼近方案应用于状态和测量非线性方程来实现的。这样的过程允许借助于合适的双线性系统来定义近似表示,对于该双线性系统可以从文献中获得滤波算法。数值模拟支持理论结果,并且相对于应用于线性化微分系统的经典Kalman-Bucy滤波器,该方法的采样误差协方差显示出相当有趣的改进。

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