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Bayesian methods for time-varying state and parameter estimation in induction machines

机译:感应电机时变状态和参数估计的贝叶斯方法

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This paper addresses the problem of nonlinear time-varying state and parameter estimation of induction machines (IMs) on the basis of a third-order electrical model. The objectives of this paper are threefold. The first objective is to propose the use of an improved particle filter (IPF) with better proposal distribution for nonlinear and non-Gaussian state and parameter estimation. The second objective is to extend the state and parameter estimation techniques (i.e., extended Kalman filter (EKF), unscented Kalman filter (UKF), particle filter (PF), and IPF) to better handle nonlinear and non-Gaussian processes without a priori state information, by utilizing a time-varying assumption of statistical parameters. In this case, the state vector to be estimated at any instant is assumed to follow a Gaussian model, where the expectation and the covariance matrix are both random. The third objective is to compare the performances of EKF, UKF, PF, and IPF in estimating the states of the power process model representing the IM (i.e, the rotor speed, the rotor flux, the stator flux, the rotor resistance, and the magnetizing inductance) and their abilities to estimate some of the key system parameters, which are needed to define the IM process model. The results show that the IPF provides a significant improvement over the PF because, unlike the PF, which depends on the choice of sampling distribution used to estimate the posterior distribution, the IPF yields an optimum choice of the sampling distribution, which also accounts for the observed data. This conclusion is also supported by the experimental results. Copyright (c) 2014 John Wiley & Sons, Ltd.
机译:本文基于三阶电气模型,解决了异步电机的非线性时变状态和参数估计问题。本文的目标是三个方面。第一个目标是提出使用具有更好提议分布的改进粒子滤波器(IPF)进行非线性和非高斯状态和参数估计。第二个目标是扩展状态和参数估计技术(即扩展卡尔曼滤波器(EKF),无味卡尔曼滤波器(UKF),粒子滤波器(PF)和IPF),以更好地处理非线性和非高斯过程,而无需先验通过利用统计参数的时变假设来获取状态信息。在这种情况下,假定要在任何时刻估计的状态向量都遵循高斯模型,其中期望和协方差矩阵都是随机的。第三个目标是比较EKF,UKF,PF和IPF的性能,以估算代表IM的功率过程模型的状态(即转子速度,转子磁通,定子磁通,转子电阻和磁感应强度)及其估算某些关键系统参数的能力,这是定义IM过程模型所必需的。结果表明IPF较PF有了显着改进,因为与PF不同,IPF取决于用于估计后验分布的采样分布的选择,IPF产生了采样分布的最佳选择,这也说明了观察数据。实验结果也支持这一结论。版权所有(c)2014 John Wiley&Sons,Ltd.

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