Bounding the difference between model predictive control and neural networks

R. Drummond, S. Duncan, M. Turner, Patricia Pauli, F. Allgöwer
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引用次数: 3

Abstract

There is a growing debate on whether the future of feedback control systems will be dominated by data-driven or model-driven approaches. Each of these two approaches has their own complimentary set of advantages and disadvantages, however, only limited attempts have, so far, been developed to bridge the gap between them. To address this issue, this paper introduces a method to bound the worst-case error between feedback control policies based upon model predictive control (MPC) and neural networks (NNs). This result is leveraged into an approach to automatically synthesize MPC policies minimising the worst-case error with respect to a NN. Numerical examples highlight the application of the bounds, with the goal of the paper being to encourage a more quantitative understanding of the relationship between data-driven and model-driven control.
界定模型预测控制与神经网络的区别
关于反馈控制系统的未来是由数据驱动还是模型驱动的方法主导的争论越来越多。这两种方法都有各自的优点和缺点,然而,到目前为止,只有有限的尝试来弥补它们之间的差距。为了解决这一问题,本文介绍了一种基于模型预测控制(MPC)和神经网络(nn)的反馈控制策略之间最坏情况误差的绑定方法。这一结果被用于自动合成MPC策略的方法,使相对于神经网络的最坏情况误差最小化。数值例子强调了边界的应用,本文的目标是鼓励对数据驱动和模型驱动控制之间的关系进行更定量的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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