高斯过程的安全临界随机事件触发学习及其在数据驱动预测控制中的应用

IF 7 1区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Kaikai Zheng;Dawei Shi;Yang Shi
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引用次数: 0

摘要

安全性和数据效率是数据驱动控制中的重要问题,特别是对于具有未知动力学和受干扰的非线性系统。在这项工作中,我们考虑了一类具有部分未知动力学的控制仿射非线性系统,旨在引入一种基于事件触发学习的控制方法,该方法具有保证安全性和提高数据利用效率。具体而言,采用随机学习方法通过定义和估计其置信区间来评估状态轨迹的安全性,数据来自随机生成的多样本状态轨迹。利用所提出的随机化学习算法,设计了具有高概率安全保证的标称轨迹,从而保证扰动系统状态以足够高的概率保持在标称轨迹周围的预定范围内。通过去除不相关数据,以满意的精度学习到标称轨迹周围的局部预测模型,并使用事件触发学习策略在线更新。在此基础上,设计了一种有效的数据驱动预测控制器,迫使系统状态在设计的安全标称轨迹附近演化。通过全面的仿真研究验证了所提出的事件触发学习和数据驱动控制方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Safety-Critical Randomized Event-Triggered Learning of Gaussian Process With Applications to Data-Driven Predictive Control
Safety and data efficiency are important concerns in data-driven control, especially for nonlinear systems with unknown dynamics and subject to disturbances. In this work, we consider a class of control-affine nonlinear systems with partially unknown dynamics and aim to introduce an event-triggered learning-based control approach with guaranteed safety and improved data utilization efficiency. Specifically, a randomized learning approach is employed to evaluate the safety of state trajectories by defining and estimating its confidence interval, with data from a multisample of randomly generated state trajectories. Using the proposed randomized learning algorithm, a nominal trajectory with a high probability safety guarantee is designed, thus ensuring the disturbed system states to remain within a prespecified range around the nominal trajectory with a sufficiently high probability. Through removing irrelevant data, a local prediction model around the nominal trajectory is learned with satisfactory precision, and is updated online using an event-triggered learning strategy. Based on the learned model, an efficient data-driven predictive controller is designed to force the system states to evolve within the vicinity of the designed safety nominal trajectory. The effectiveness of the proposed event-triggered learning and data-driven control approaches is validated through comprehensive simulation studies.
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来源期刊
IEEE Transactions on Automatic Control
IEEE Transactions on Automatic Control 工程技术-工程:电子与电气
CiteScore
11.30
自引率
5.90%
发文量
824
审稿时长
9 months
期刊介绍: In the IEEE Transactions on Automatic Control, the IEEE Control Systems Society publishes high-quality papers on the theory, design, and applications of control engineering. Two types of contributions are regularly considered: 1) Papers: Presentation of significant research, development, or application of control concepts. 2) Technical Notes and Correspondence: Brief technical notes, comments on published areas or established control topics, corrections to papers and notes published in the Transactions. In addition, special papers (tutorials, surveys, and perspectives on the theory and applications of control systems topics) are solicited.
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