论文标题
实施规定的时间收敛控制:采样和鲁棒性
Implementing prescribed-time convergent control: sampling and robustness
论文作者
论文摘要
根据最近的结果,如果随着时间的推移连续应用控制,则可以在极端模型不确定性下实现预定或规定的有限时间的收敛。本文表明,在抽样中不能容忍这种极端的不确定性,即使在临近截止日期的情况下,采样可能会变得无限频繁,除非采样策略是根据控制作用的增长设计的。分析了模型不确定性下的鲁棒性,并量化了在抽样下可以忍受的不确定性量,以制定实际上可以实现的最少限制性的规定时间控制问题。为标量系统提供了一些解决此问题的解决方案。此外,在初始条件的A-Priori知识下,或者如果可以在首次测量后选择策略,则表明也可以通过线性时间不变的控制和均匀的采样来达到实际的,实际上可实现的目标。这些派生有助于洞悉实施规定的时间控制器可能具有的实际优势。
According to recent results, convergence in a prespecified or prescribed finite time can be achieved under extreme model uncertainty if control is applied continuously over time. This paper shows that this extreme amount of uncertainty cannot be tolerated under sampling, not even if sampling could become infinitely frequent as the deadline is approached, unless the sampling strategy were designed according to the growth of the control action. Robustness under model uncertainty is analyzed and the amount of uncertainty that can be tolerated under sampling is quantified in order to formulate the least restrictive prescribed-time control problem that is practically implementable. Some solutions to this problem are given for a scalar system. Moreover, either under a-priori knowledge of bounds for initial conditions, or if the strategy can be selected after the first measurement becomes available, it is shown that the real, practically achievable objectives can also be reached with linear time-invariant control and uniform sampling. These derivations serve to yield insight into the real advantages that implementation of prescribed-time controllers may have.