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Model reference adaptive iterative learning control for linear systems

机译:线性系统的模型参考自适应迭代学习控制

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In this paper, we propose a model reference adaptive control (MRAC) strategy for continuous-time single-input single-output (SISO) linear time-invariant (LTI) systems with unknown parameters, performing repetitive tasks. This is achieved through the introduction of a discrete-type parametric adaptation law in the 'iteration domain', which is directly obtained from the continuous-time parametric adaptation law used in standard MRAC schemes. In fact, at the first iteration, we apply a standard MRAC to the system under consideration, while for the subsequent iterations, the parameters are appropriately updated along the iteration-axis, in order to enhance the tracking performance from iteration to iteration. This approach is referred to as the model reference adaptive iterative learning control (MRAILC). In the case of systems with relative degree one, we obtain a pointwise convergence of the tracking error to zero, over the whole finite time interval, when the number of iterations tends to infinity. In the general case, i.e. systems with arbitrary relative degree, we show that the tracking error converges to a prescribed small domain around zero, over the whole finite time interval, when the number of iterations tends to infinity. It is worth noting that this approach allows: (1) to extend existing MRAC schemes, in a straightforward manner, to repetitive systems; (2) to avoid the use of the output time derivatives, which are generally required in traditional iterative learning control (ILC) strategies dealing with systems with high relative degree; (3) to handle systems with multiple tracking objectives (i.e. the desired trajectory can be iteration-varying). Finally, simulation results are carried out to support the theoretical development.
机译:在本文中,我们为参数未知,执行重复任务的连续时间单输入单输出(SISO)线性时不变(LTI)系统提出了一种模型参考自适应控制(MRAC)策略。这是通过在“迭代域”中引入离散类型的参数自适应定律来实现的,该定律直接从标准MRAC方案中使用的连续时间参数自适应定律中获得。实际上,在第一次迭代中,我们将标准MRAC应用于正在考虑的系统,而对于后续的迭代,则沿迭代轴适当更新参数,以增强每次迭代之间的跟踪性能。这种方法称为模型参考自适应迭代学习控制(MRAILC)。对于相对度数为1的系统,当迭代次数趋于无穷大时,我们在整个有限的时间间隔内将跟踪误差逐点收敛至零。在一般情况下,即具有任意相对程度的系统,我们表明,当迭代次数趋于无穷大时,在整个有限的时间间隔内,跟踪误差会收敛到零附近的规定小域。值得注意的是,这种方法允许:(1)以简单的方式将现有的MRAC方案扩展到重复的系统; (2)避免使用输出时间导数,这是处理相对度较高的系统的传统迭代学习控制(ILC)策略中通常需要的; (3)处理具有多个跟踪目标的系统(即,所需的轨迹可以是迭代变化的)。最后,进行了仿真结果以支持理论发展。

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