不确定环境下汽车的自适应安全控制

Siddharth Gangadhar, Zhuoyuan Wang, Haoming Jing, Yorie Nakahira
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引用次数: 3

摘要

本文提出了一种自适应安全控制方法,该方法可以适应不断变化的环境,容忍大的不确定性,并利用自动驾驶中的预测。首先给出了系统参数存在不确定性时保证系统长期安全概率的充分条件。然后,利用安全条件,提出了一种随机自适应安全控制方法。最后,我们在几个驾驶场景中对所提出的技术进行了数值测试。长期安全概率的使用提供了足够的展望时间范围,以捕捉对未来环境的预测和计划的车辆机动,并避开景点的不安全区域。由此产生的控制动作系统地调节基于不确定性的行为,并且即使在很大的不确定性下也能找到更安全的动作。该特性允许系统快速响应变化和风险,甚至在对变化参数进行准确估计之前。安全概率是可以不断学习和提炼的。使用更精确的概率可以避免过度保守,这是确定性最坏情况方法的一个常见缺点。所提出的技术还可以利用机载硬件高效地实时计算,并模块化地集成到现有的过程中,如预测模型控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Safe Control for Driving in Uncertain Environments
This paper presents an adaptive safe control method that can adapt to changing environments, tolerate large uncertainties, and exploit predictions in autonomous driving. We first derive a sufficient condition to ensure long-term safe probability when there are uncertainties in system parameters. Then, we use the safety condition to formulate a stochastic adaptive safe control method. Finally, we test the proposed technique numerically in a few driving scenarios. The use of long-term safe probability provides a sufficient outlook time horizon to capture future predictions of the environment and planned vehicle maneuvers and to avoid unsafe regions of attractions. The resulting control action systematically mediates behaviors based on uncertainties and can find safer actions even with large uncertainties. This feature allows the system to quickly respond to changes and risks, even before an accurate estimate of the changed parameters can be constructed. The safe probability can be continuously learned and refined. Using more precise probability avoids over-conservatism, which is a common drawback of the deterministic worst-case approaches. The proposed techniques can also be efficiently computed in real-time using onboard hardware and modularly integrated into existing processes such as predictive model controllers.
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