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A time-varying forgetting factor stochastic gradient combined with Kalman filter algorithm for parameter identification of dynamic systems

机译:时变遗忘因子随机梯度与卡尔曼滤波算法相结合的动态系统参数辨识

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摘要

Parameter estimation problem of a class of observer canonical state-space system is considered in this paper. By means of the property of the shift operator, the space-statemodel is transformed into the input- output representations. Then, a time-varying forgetting factor stochastic gradient combined with Kalman filter algorithm is proposed. The proposed algorithm is based on interactively estimating unknown parameters to achieve all the parameters identification of the system. A numerical example is provided to verify the effectiveness of the proposed algorithm.
机译:研究了一类观测器规范状态空间系统的参数估计问题。借助于移位运算符的属性,空间状态模型被转换为输入-输出表示。然后,提出了一种时变遗忘因子随机梯度与卡尔曼滤波算法相结合的方法。该算法基于交互式估计未知参数,以实现系统的所有参数识别。数值例子验证了所提算法的有效性。

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