On Recurrent Neural Networks for learning-based control: Recent results and ideas for future developments

被引:52
作者
Bonassi, Fabio [1 ]
Farina, Marcello [1 ]
Xie, Jing [1 ]
Scattolini, Riccardo [1 ]
机构
[1] Politecn Milan, Dipartimento Elettron Informaz & Bioingn, Via Ponzio 34-5, I-20133 Milan, Italy
基金
欧盟地平线“2020”;
关键词
Recurrent Neural Networks; Stability; Identification; Nonlinear systems; Model predictive control; Process control; MODEL-PREDICTIVE CONTROL; TO-STATE STABILITY; SYSTEM-IDENTIFICATION; DESIGN; FEEDBACK; CONTROLLABILITY; MPC; BOX;
D O I
10.1016/j.jprocont.2022.04.011
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in control design applications. The main families of RNN are considered, namely Neural Nonlinear AutoRegressive eXogenous, Echo State Networks, Long Short Term Memory, and Gated Recurrent Units. The goal is twofold. Firstly, to survey recent results concerning the training of RNN that enjoy Input-to-State Stability (ISS) and Incremental Input-to-State Stability (delta ISS) guarantees. Secondly, to discuss the issues that still hinder the widespread use of RNN for control, namely their robustness, verifiability, and interpretability. The former properties are related to the so-called generalization capabilities of the networks, i.e. their consistency with the underlying real plants, even in presence of unseen or perturbed input trajectories. The latter is instead related to the possibility of providing a clear formal connection between the RNN model and the plant. In this context, we illustrate how ISS and delta ISS represent a significant step towards the robustness and verifiability of the RNN models, while the requirement of interpretability paves the way to the use of physics-based networks. The design of model predictive controllers with RNN as plant's model is also briefly discussed. Lastly, some of the main topics of the paper are illustrated on a simulated chemical system. (C) 2022 Elsevier Ltd. All rights reserved.
引用
收藏
页码:92 / 104
页数:13
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