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Approximate adjoint-based iterative learning control

机译:基于近似伴随的迭代学习控制

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This paper characterises stochastic convergence properties of adjoint-based (gradient-based) iterative learning control (ILC) applied to systems with load disturbances, when provided only with approximate gradient information and noisy measurements. Specifically, conditions are discussed under which the approximations will result in a scheme which converges to an optimal control input. Both the cases of time-invariant step sizes and cases of decreasing step sizes (as in stochastic approximation) are discussed. These theoretical results are supplemented with an application on a sequencing batch reactor for wastewater treatment plants, where approximate gradient information is available. It is found that for such case adjoint-based ILC outperforms inverse-based ILC and model-free P-type ILC, both in terms of convergence rate and measurement noise tolerance.
机译:本文仅在提供近似梯度信息和噪声测量的情况下,描述了基于联合(基于梯度)的迭代学习控制(ILC)应用于负载扰动系统的随机收敛特性。具体而言,讨论了在这些条件下逼近将导致收敛到最佳控制输入的方案的条件。讨论了时不变步长的情况和步长减小的情况(如随机近似)。这些理论结果通过在废水处理厂的顺序批处理反应器中的应用得到了补充,在该反应器中可获得近似的梯度信息。发现在这种情况下,基于会聚的ILC在收敛速度和测量噪声容限方面均优于基于逆的ILC和无模型的P型ILC。

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