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Adaptive Estimation for Cause-Effect Control Systems with Model Parameters and Noise Perturbations

机译:具有模型参数和噪声扰动的原因效应控制系统的自适应估计

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In this paper, the state estimation problem is studied for a class of discrete-time nonlinear Effect systems(E-systems) in “Cause-effect control theory”. An adaptive unscented Kalman filtering algorithm is designed for the case that the state of the E-systems undergoes sudden changes when there are uncertainties in the model parameters or noise perturbations. A fading factor is introduced into the prediction error covariance of the filter in order to weaken the influence of a priori information on the current estimate in real time, and thus improve the accuracy of the state estimation. Finally, effectiveness of the algorithm is verified by a numerical simulation example.
机译:本文研究了“造成控制理论”中一类离散时间非线性效应系统(电子系统)的状态估计问题。适应无编号的卡尔曼滤波算法被设计用于当模型参数或噪声扰动中存在不确定性时,电子系统的状态经历突然变化的情况。将衰落因子引入滤波器的预测误差协方差,以便在实时地削弱先验信息对当前估计的影响,从而提高状态估计的准确性。最后,通过数值模拟示例验证了算法的有效性。

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