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A switching periodic adaptive control approach for time-varying parameters with unknown periodicity

机译:具有未知周期的时变参数的切换周期自适应控制方法

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摘要

Periodic variations are encountered in many real systems, which can exist in the system parameters, as a disturbance or as the tracking objective. However, there exist a great number of situations where the periodicity is not known in advance. Hence, how to compensate for the effects of time-varying parameters with unknown periodicity remains a challenge for the controller design. In this paper, we proposed a switching periodic adaptive control approach for continuous-time nonlinear parametric systems with periodic uncertainties in which the period and bound are not known in advance. We utilized a fully saturated periodic adaptation law to identify the unknown periodic parameters in a pointwise manner. In addition, we provided a logic-based switching scheme to estimate the unknown period and bound online simultaneously. By virtue of Lyapunov stability analysis, we show that the asymptotic convergence can be guaranteed irrespective of the initial conditions. Finally, we carried out numerical simulations to demonstrate the efficacy of the switching periodic adaptive control algorithm. The proposed approach can be applied to parametric nonlinear systems with time-varying parameters of unknown periodicity irrespective of the types of periodic uncertainties. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:在许多实际系统中会遇到周期性变化,这些周期性变化可能会以干扰或跟踪目标的形式存在于系统参数中。然而,存在许多情况,其中周期性不是预先已知的。因此,如何补偿具有未知周期性的时变参数的影响仍然是控制器设计的挑战。在本文中,我们提出了一种具有周期不确定性的连续时间非线性参数系统的切换周期自适应控制方法,该系统的周期和界限事先未知。我们利用完全饱和的周期自适应定律以点方式识别未知的周期参数。此外,我们提供了一种基于逻辑的切换方案来估计未知周期并同时在线绑定。通过Lyapunov稳定性分析,我们证明了与初始条件无关,都能保证渐近收敛。最后,我们进行了数值模拟,以证明切换周期自适应控制算法的有效性。所提出的方法可以应用于具有未知周期性的时变参数的参数非线性系统,而与周期性不确定性的类型无关。版权所有(C)2015 John Wiley&Sons,Ltd.

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