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Deep Reinforcement Learning-Based Antilock Braking Algorithm

VEHICLE SYSTEM DYNAMICS(2023)

Indian Inst Technol Madras

Cited 3|Views2
Abstract
Tires play an important role in the performance of vehicular safety systems. Antilock braking system is one of the most important active safety systems that interacts with the tires. Unlike a variety of existing algorithms which are tuned to a specific tire, this research proposes a model-free reinforcement learning-based control algorithm which can adapt to changing tire characteristics and there by effectively utilising the available grip at tire–road interface. The simulation model, consisting of brake actuator dynamics, transportation delays, tire relaxation behaviour, vehicular longitudinal and pitch dynamics, is trained using more than 350,000 random tires. To reduce training time, a parallelisation architecture has been proposed which distributes learning and simulation tasks to different CPU cores. Finally, a conditional variance-based sensitivity analysis with over twelve thousand tires indicate improved grip utilisation at tire–road interface and decreased sensitivity of stopping distance on tire nonlinearity compared to literature version of Bosch algorithm.
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Key words
Antilock braking system,reinforcement learning,conditional variance-based sensitivity analysis,conditional mean,magic formula tire,stopping distance
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要点】:本研究提出了一种基于深度强化学习的防抱死制动算法,能够适应变化的轮胎特性,有效利用轮胎与路面间的抓地力,提高车辆安全性能。

方法】:采用模型自由的强化学习控制算法,通过模拟包含刹车执行器动力学、传输延迟、轮胎松弛行为、车辆纵向和俯仰动力学的模型,并使用超过35万种随机轮胎数据进行训练。

实验】:通过并行化架构减少训练时间,并将学习与模拟任务分配至不同的CPU核心。使用超过1.2万种轮胎进行条件方差敏感性分析,结果表明该算法相比博世算法在抓地力利用和制动距离对轮胎非线性敏感性方面均有改善。