Networked control systems have gained considerable attention over the last decade as a result of the trend towards decentralised control applications and the emergence of cyber-physical system applications. However, real-world wireless networked control systems suffer from limited communication bandwidths, reliability issues, and a lack of awareness of network dynamics due to the complex nature of wireless networks. Combining machine learning and event-triggered control has the potential to alleviate some of these issues. For example, machine learning can be used to overcome the problem of a lack of network models by learning system behavior or adapting to dynamically changing models by continuously learning model dynamics. Event-triggered control can help to conserve communication bandwidth by transmitting control information only when necessary or when resources are available. The purpose of this article is to conduct a review of the literature on the use of machine learning in combination with event-triggered control. Machine learning techniques such as statistical learning, neural networks, and reinforcement learning-based approaches such as deep reinforcement learning are being investigated in combination with event-triggered control. We discuss how these learning algorithms can be used for different applications depending on the purpose of the machine learning use. Following the review and discussion of the literature, we highlight open research questions and challenges associated with machine learning-based event-triggered control and suggest potential solutions.
翻译:过去十年来,由于控制应用分散化的趋势和网络物理应用的出现,网络控制系统得到了相当的重视,但是,现实世界的无线网络控制系统由于通信带宽有限、可靠性问题和由于无线网络的复杂性质而缺乏对网络动态的了解而受到影响。机器学习和事件触发控制相结合,有可能缓解其中的一些问题。例如,机器学习和事件触发控制可以用来通过学习系统行为或通过不断学习模型动态来适应不断变化的模型来克服网络模型的缺乏问题。事件触发控制只有在必要或有资源可用的情况下才能通过传输控制信息来帮助保护通信带宽。本文章的目的是审查与事件触发控制相结合使用机器学习的文献。正在对统计学习、神经网络和强化强化强化学习方法(如深层强化学习)等机械学习技术进行调查,同时进行事件触发控制。我们讨论了这些学习算法如何用于不同应用,取决于机器学习使用的目的。在机器学习使用时,我们通过审查并讨论可能发生的问题,然后通过公开的机器控制来讨论。