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Non-Gaussian parameter estimation using generalized polynomial chaos expansion with extended Kalman filtering

机译:使用扩展卡尔曼滤波的广义多项式混沌展开进行非高斯参数估计

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Kalman Filter (KF) based parameter estimation assumes Gaussianity of the system parameters and thus propagates only the first two moments of the states. Application of Particle filter or Ensemble Kalman filter to estimate non-Gaussian parameters, although more accurate, is computationally expensive. Generalized polynomial chaos (gPC) is well-known as an effective tool to describe any dynamic system with stationary uncertainty through a set of orthogonal basis functions and associated coefficients. This article couples gPC with Extended KF (EKF) algorithm in which the uncertainty propagation from parameter to measurement is described through gPC expansion of parameters and outputs. Subsequently, the gPC coefficients of the parameter expansion are estimated from available measurements employing EKF. Thus, instead of selecting the system parameters as states, we consider the associated parameter gPC coefficients as state variables which reduces the problem of estimating the complete distribution of parameters down to identification of a few gPC coefficients. The proposed method is tested on systems with either Gaussian or non-Gaussian parameters. The error in estimating non-Gaussian parameters using KF based techniques is demonstrated. (C) 2017 Elsevier Ltd. All rights reserved.
机译:基于卡尔曼滤波器(KF)的参数估计假设系统参数为高斯性,因此仅传播状态的前两个时刻。应用粒子滤波器或Ensemble Kalman滤波器来估计非高斯参数,尽管更准确,但在计算上却很昂贵。众所周知,广义多项式混沌(gPC)是通过一组正交基函数和相关系数来描述具有固定不确定性的任何动态系统的有效工具。本文将gPC与扩展KF(EKF)算法结合使用,其中通过参数和输出的gPC扩展来描述从参数到测量的不确定性传播。随后,从采用EKF的可用测量中估计参数扩展的gPC系数。因此,不是将系统参数选择为状态,而是将关联的参数gPC系数视为状态变量,这减少了估计参数的完整分布直到识别出几个gPC系数的问题。该方法在具有高斯或非高斯参数的系统上进行了测试。演示了使用基于KF的技术估计非高斯参数时的错误。 (C)2017 Elsevier Ltd.保留所有权利。

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