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Data-Driven Model-Free Model-Reference Nonlinear Virtual State Feedback Control from Input-Output Data

机译:数据驱动的无模型型号参考非线性虚拟状态反馈控制来自输入输出数据

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In this paper we show that it is possible to learn high performance model reference controllers using a model-free Q-learning approach, based on input-output (IO) samples collected from the controlled process. Under observability assumptions for the process, virtual extended state-space process models of different orders are built from the IO collected samples. We prove that state-space control of these virtual processes is equivalent to IO control of the initial process. For the virtual state-space process, high performance nonlinear Neural Network (NN) state-feedback controllers are learned based on the IO data collected from the initial process, to achieve output model-reference tracking control. Control learning is a two-step model-free process: an IO model-free controller first drives the process exploration of a wide operating range for IO samples collection that are then used to model-free learn the NN controllers. The approach is successfully validated on a highly nonlinear coupled aerodynamic system.
机译:在本文中,我们表明,可以使用自控过程收集的输入输出(IO)样本来使用无模型Q学习方法学习高性能模型参考控制器。在可观察性假设过程中,从IO收集的样本构建了不同订单的虚拟扩展状态空间过程模型。我们证明了这些虚拟进程的状态空间控制等同于IO控制初始过程。对于虚拟状态空间过程,基于从初始过程中收集的IO数据来学习高性能非线性神经网络(NN)状态反馈控制器,以实现输出模型参考跟踪控制。控制学习是一种两步的无模型过程:无IO模型控制器首先驱动到IO样本集合的宽操作范围的过程探索,然后用于无模型学习NN控制器。该方法在高度非线性耦合空气动力系统上成功验证。

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