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A stochastic iterative learning control algorithm with application to an induction motor

机译:随机迭代学习控制算法在感应电动机中的应用

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A recursive optimal algorithm, based on minimizing the input error covariance matrix, is derived to generate the learning gain matrix of a P-type ILC for linear discrete-time varying systems with arbitrary relative degree. It is shown that, in the case where the number of inputs is not greater than the number of outputs, the input error covariance matrix converges to zero at a rate inversely proportional to the number of iterations in the presence of uncorrelated random state disturbance, reinitialization errors and measurement noise. The state error covariance matrix converges to zero at a rate inversely proportional to the number of iterations in the presence of measurement noise. In the case where the number of inputs is greater than the number of outputs, then the system output error converges to zero at a rate inversely proportional to the number of iterations in presence of measurement noise. Another suboptimal recursive algorithm is also proposed based on unknown system dynamics and unknown disturbance statistics. The convergence characteristics are shown to be similar to the ones of the optimal recursive algorithm. The proposed ILC algorithms are applied to two different models of an induction motor for angular speed tracking control. One model describes its dynamics in stator fixed (a, b) reference frame without current loops and the other model is also in stator fixed reference( a, b) reference frame but with high-gain current loops. The simulation results show good tracking performance in the presence of noise with erroneous model parameters and noise statistics. An open-loop control is also proposed to improve the tracking rate of the proposed ILC algorithms. [References: 42]
机译:推导基于最小化输入误差协方差矩阵的递归最优算法,以生成具有任意相对度的线性离散时变系统的P型ILC的学习增益矩阵。结果表明,在输入数量不大于输出数量的情况下,在存在不相关的随机状态扰动的情况下,输入误差协方差矩阵以与迭代次数成反比的速率收敛到零,重新初始化误差和测量噪声。在存在测量噪声的情况下,状态误差协方差矩阵以与迭代次数成反比的速率收敛到零。在输入数量大于输出数量的情况下,系统输出误差以与存在测量噪声的迭代次数成反比的速率收敛到零。还基于未知的系统动力学和未知的干扰统计量,提出了另一种次优的递归算法。收敛特性显示出与最佳递归算法相似。所提出的ILC算法被应用于感应电动机的两种不同模型,用于角速度跟踪控制。一个模型在没有电流回路的定子固定参考(a,b)参考框架中描述其动力学,另一种模型在具有高增益电流回路的定子固定参考(a,b)参考框架中进行描述。仿真结果表明,在存在带有错误模型参数和噪声统计信息的噪声的情况下,良好的跟踪性能。还提出了一种开环控制来提高所提出的ILC算法的跟踪率。 [参考:42]

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