线性数据驱动预测控制手册:理论、实现与设计

IF 7.3 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
P.C.N. Verheijen, V. Breschi, M. Lazar
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引用次数: 0

摘要

近年来,数据驱动预测控制(DPC)作为模型预测控制的替代方案越来越受到关注,因为它需要较少的系统知识来实现,并且在智能工程系统中通常可以获得可靠的数据。最近已经开发了几种数据驱动的预测控制算法,它们在很大程度上遵循了类似的方法,但具有特定的公式和调谐参数。本综述旨在为学术界和工业界寻求接近和探索这一领域的人们提供关于线性数据驱动的预测控制方法和实践的结构化和易于访问的指南。为此,我们首先讨论标准方法,如子空间预测控制(SPC)和数据支持预测控制(DeePC),但我们也包括DPC的新混合方法,如γ -数据驱动预测控制和广义数据驱动预测控制。对于所有提出的数据驱动预测控制器,我们提供了关于基础理论,实现细节和设计指南的详细分析,包括保证闭环稳定性的方法概述以及处理非线性系统的有前途的扩展。通过对文献中两个基准示例的模拟,比较了所审查的DPC方法的性能,使我们能够在存在噪声数据的情况下提供不同技术的全面概述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handbook of linear data-driven predictive control: Theory, implementation and design

Data-driven predictive control (DPC) has gained an increased interest as an alternative to model predictive control in recent years, since it requires less system knowledge for implementation and reliable data is commonly available in smart engineering systems. Several data-driven predictive control algorithms have been developed recently, which largely follow similar approaches, but with specific formulations and tuning parameters. This review aims to provide a structured and accessible guide on linear data-driven predictive control methods and practices for people in both academia and the industry seeking to approach and explore this field. To do so, we first discuss standard methods, such as subspace predictive control (SPC), and data-enabled predictive control (DeePC), but we also include newer hybrid approaches to DPC, such as γ–data-driven predictive control and generalized data-driven predictive control. For all presented data-driven predictive controllers we provide a detailed analysis regarding the underlying theory, implementation details and design guidelines, including an overview of methods to guarantee closed-loop stability and promising extensions towards handling nonlinear systems. The performance of the reviewed DPC approaches is compared via simulations on two benchmark examples from the literature, allowing us to provide a comprehensive overview of the different techniques in the presence of noisy data.

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来源期刊
Annual Reviews in Control
Annual Reviews in Control 工程技术-自动化与控制系统
CiteScore
19.00
自引率
2.10%
发文量
53
审稿时长
36 days
期刊介绍: The field of Control is changing very fast now with technology-driven “societal grand challenges” and with the deployment of new digital technologies. The aim of Annual Reviews in Control is to provide comprehensive and visionary views of the field of Control, by publishing the following types of review articles: Survey Article: Review papers on main methodologies or technical advances adding considerable technical value to the state of the art. Note that papers which purely rely on mechanistic searches and lack comprehensive analysis providing a clear contribution to the field will be rejected. Vision Article: Cutting-edge and emerging topics with visionary perspective on the future of the field or how it will bridge multiple disciplines, and Tutorial research Article: Fundamental guides for future studies.
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