Unscented Kalman filter for higher index nonlinear differential-algebraic equations

Ilja Alkov, Dirk Weidemann
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引用次数: 1

Abstract

This contribution concerns the unscented Kalman filter (UKF) for higher index nonlinear differential-algebraic equation (DAE) systems. First, a short introduction to DAE systems is given. A solution concept for nonlinear DAE systems is discussed focusing on properties which are essential for the application of the UKF algorithm. The introduction of a stochastic noise in DAE systems and the contrast to stochastic ordinary differential equations (ODE) are described subsequently. Further, the unscented Kalman filter algorithm is reviewed and former filtering approaches considering DAE systems are summarized. Finally, a direct generalized state estimation approach for higher index nonlinear DAE systems utilizing the UKF is proposed. Particularly, the estimation of the DAE inconsistent generalized state is permitted and several concepts for the consistent DAE initialization in the prediction step of the filtering algorithm are proposed. A simple example demonstrates the advantages of the proposed approach.
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高指标非线性微分代数方程的无气味卡尔曼滤波
这一贡献涉及高指标非线性微分代数方程(DAE)系统的无气味卡尔曼滤波器(UKF)。首先,简要介绍DAE系统。讨论了非线性DAE系统的求解概念,重点讨论了UKF算法应用的基本性质。随后介绍了DAE系统中随机噪声的引入以及与随机常微分方程(ODE)的对比。在此基础上,对无气味卡尔曼滤波算法进行了综述,并总结了前人针对DAE系统的滤波方法。最后,提出了一种利用UKF对高指标非线性DAE系统进行直接广义状态估计的方法。特别地,允许DAE不一致广义状态的估计,并在滤波算法的预测步骤中提出了DAE一致初始化的几个概念。一个简单的例子证明了该方法的优点。
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