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An adaptive learning regulator for uncertain minimum phase systems with undermodeled unknown exosystems

机译:具有欠建模的未知外系统的不确定最小相位系统的自适应学习调节器

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摘要

The design of an adaptive learning regulator is addressed for uncertain minimum phase linear systems (with known bounds, known upper bound on system order, known relative degree, known high frequency gain sign) and for unknown exosystems (with unknown order, uncertain frequencies). On the basis of a known bound on system uncertainties and a known bound on the modeled exosystem frequencies, a new adaptive output error feedback control algorithm is proposed which guarantees exponential convergence of both the output and the control input errors into residual bounds which decrease as the exosystem modeling error decreases. Exponential convergence of both errors to zero is obtained when the regulator exactly models all exosystem excited frequencies, while asymptotic convergence of both errors to zero is achieved when the actual exosystem is overmodeled by the regulator. The new algorithm generalizes existing learning controllers since, in the case of periodic references and/or disturbances, the knowledge of the period is not required.
机译:自适应学习调节器的设计适用于不确定的最小相位线性系统(具有已知范围,系统阶数已知的上限,已知相对度,已知高频增益符号)和未知外系系统(具有未知阶数,不确定频率)。基于系统不确定性的已知界限和建模外系统频率的已知界限,提出了一种新的自适应输出误差反馈控制算法,该算法可确保输出误差和控制输入误差成指数收敛到残差边界,该残差随着残差的减小而减小。外系统建模错误减少。当调节器精确地模拟所有系外系统的激发频率时,将两个误差的指数收敛为零,而当调节器对实际系外系统进行过建模时,则将两个误差的指数渐近收敛为零。新算法对现有的学习控制器进行了概括,因为在周期性参考和/或干扰的情况下,不需要了解周期。

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