PD-type iterative learning algorithm for uncertain time-delay systems

J. Xu, Yanxin Zhang
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Abstract

In this paper, for a class of NCS with uncertain time delay, a PD-type iterative learning algorithm (ILC) is proposed to compensate the time delay. Based on the strictly repetition of the initial state, the sufficient conditions which guarantee the uniform convergence of the ILC is given. And the limit output trajectories generated by the action of the ILC are also presented. Then, comparing with the efficiency of the P-type ILC algorithm, it is shown that the PD-type ILC is more effective to compensate the time delay. For the case that the range of the time delay becomes smaller, it can track the output trajectories more precisely than the P-type ILC algorithm. Moreover, under the same number of iteration, the PD-type ILC algorithm can track the state trajectories faster than the P-type ones.
不确定时滞系统的pd型迭代学习算法
针对一类具有不确定时延的网络控制系统,提出了一种pd型迭代学习算法(ILC)来补偿时延。基于初始状态的严格重复,给出了保证ILC一致收敛的充分条件。并给出了由ILC作用产生的极限输出轨迹。然后,与p型ILC算法的效率进行比较,表明pd型ILC算法能够更有效地补偿时延。在时间延迟范围变小的情况下,它比p型ILC算法更精确地跟踪输出轨迹。此外,在相同迭代次数下,pd型ILC算法比p型ILC算法能更快地跟踪状态轨迹。
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