Safe Learning Reference Governor: Theory and Application to Fuel Truck Rollover Avoidance

Kaiwen Liu, Nan I. Li, I. Kolmanovsky, Denise M. Rizzo, A. Girard
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引用次数: 5

Abstract

This paper proposes a learning reference governor (LRG) approach to enforce state and control constraints in systems for which an accurate model is unavailable; and this approach enables the reference governor to gradually improve command tracking performance through learning while enforcing the constraints during learning and after learning is completed. The learning can be performed either on a black-box type model of the system or directly on the hardware. After introducing the LRG algorithm and outlining its theoretical properties, this paper investigates LRG application to fuel truck (tank truck) rollover avoidance. Through simulations based on a fuel truck model that accounts for liquid fuel sloshing effects, we show that the proposed LRG can effectively protect fuel trucks from rollover accidents under various operating conditions.
安全学习参考调速器:燃油车防侧翻理论与应用
本文提出了一种学习参考调控器(LRG)方法,用于在无法获得精确模型的系统中执行状态和控制约束;这种方法使参考调控器在学习过程中和学习完成后,通过学习逐步提高命令跟踪性能。学习既可以在系统的黑盒模型上执行,也可以直接在硬件上执行。在介绍了LRG算法及其理论特性的基础上,研究了LRG算法在油罐车防侧翻中的应用。通过考虑液体燃料晃动效应的油罐车模型仿真,结果表明,在不同工况下,该系统能有效保护油罐车不发生侧翻事故。
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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