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Optimal behaviour prediction using a primitive-based data-driven model-free iterative learning control approach

机译:使用基于原始数据驱动的无模型迭代学习控制方法的最佳行为预测

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This paper suggests an optimal behaviour prediction mechanism for Multi Input-Multi Output control systems in a hierarchical control system structure, using previously learned solutions to simple tasks called primitives. The optimality of the behaviour is formulated as a reference trajectory tracking problem. The primitives are stored in a library of pairs of reference input/controlled output signals. The reference input primitives are optimized at the higher hierarchical level in a model-free iterative learning control (MFILC) framework without using knowledge of the controlled process. Learning of the reference input primitives is performed in a reduced subspace using radial basis functions for approximations. The convergence of the MFILC learning scheme is achieved via a Virtual Reference Feedback Tuning design of the feedback controllers in the lower level feedback control loops. The new complex trajectories to be tracked are decomposed into the output primitives regarded as basis functions. Next, the optimal reference input fed to the control system in order to track the desired new trajectory is then recomposed from the reference input primitives. The efficiency of this approach is demonstrated on a case study concerning the control of a two-axis positioning mechanism, and the experimental validation is offered. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于分层控制系统结构中的多输入多输出控制系统的最佳行为预测机制,该机制使用先前学习的解决方案(称为原语)解决方案。行为的最优性被公式化为参考轨迹跟踪问题。原语存储在成对的参考输入/受控输出信号库中。参考输入原语在无模型迭代学习控制(MFILC)框架中的较高层次级别进行了优化,而无需使用受控过程的知识。参考输入图元的学习是使用径向基函数进行近似的,在缩小的子空间中执行的。 MFILC学习方案的收敛是通过较低级别的反馈控制回路中反馈控制器的虚拟参考反馈调整设计实现的。要跟踪的新复杂轨迹被分解为被视为基本函数的输出图元。接下来,然后从参考输入原语重新组成输入到控制系统的最佳参考输入,以便跟踪所需的新轨迹。在有关控制两轴定位机制的案例研究中证明了这种方法的效率,并提供了实验验证。 (C)2015 Elsevier B.V.保留所有权利。

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