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GENERALIZED POLYNOMIAL CHAOS-BASED EXTENDED KALMAN FILTER: IMPROVEMENT AND EXPANSION

机译:基于广义多项式混沌的扩展卡尔曼滤波器:改进和扩展

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The generalized polynomial chaos (gPC) method for propagating uncertain parameters through dynamical systems (previously developed at Virginia Tech) has been shown to be very computationally efficient. This method seems also to be ideal for real-time parameter estimation when merged with the Extended Kalman Filter (EKF). The resulting technique is shown in the present paper for systems in state-space representations, and then expanded to systems in regressions formulations. Due to the way the filter interacts with the polynomial chaos expansions, the covariance matrix is forced to zero in finite time. This problem shows itself as an inability to perform state estimations and causes the parameters to converge to incorrect values for state space systems. In order to address this issue, improvements to the method are implemented and the updated method is applied to both state space and regression systems. The resultant technique shows high accuracy of both state and parameter estimations.
机译:通过动力学系统(先前由Virginia Tech开发)用于传播不确定参数的广义多项式混沌(gPC)方法已显示出非常高的计算效率。当与扩展卡尔曼滤波器(EKF)合并时,该方法似乎也是实时参数估计的理想选择。本文针对状态空间表示中的系统显示了所得的技术,然后将其扩展到回归公式中的系统。由于滤波器与多项式混沌扩展相互作用的方式,协方差矩阵在有限时间内被强制为零。此问题表明自己无法执行状态估计,并导致参数收敛到状态空间系统的错误值。为了解决此问题,对方法进行了改进,并将更新的方法应用于状态空间和回归系统。所得技术显示出状态和参数估计的高精度。

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