粗糙路面防抱死制动系统的无模型智能控制

IF 2.8 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY
Ricardo Simões de Abreu, T. Botha, H. Hamersma
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引用次数: 1

摘要

防抱死制动系统(ABS)等先进驾驶辅助系统的进步大大提高了道路车辆的安全性。ABS增强了车辆在恶劣制动条件下的制动和转向性能。然而,在粗糙的道路上,ABS性能下降。这主要是由于噪声测量,所使用的ABS控制算法的类型,以及在控制策略中被忽略的复杂动力学(如高阶轮胎模态振型)的激励。本研究提出了一种无模型智能控制技术,该技术没有建模约束,可以克服这些未建模的动力学和参数不确定性。提出了基于时间卷积网络的双深度q -学习网络(DDQN)算法作为智能控制算法。首先用简化的单轮模型对模型进行训练。最初的训练数据被传输到一个经过验证的整车模型,其中包括一个基于物理的轮胎模型,以及一个增加了随机性的三维(3D)粗糙路面轮廓。新开发的ABS控制器的性能与基线算法进行了比较,以适应粗糙的道路使用。仿真结果表明,该控制算法既能有效防止粗糙路面上的车轮抱死,又不会显著降低车辆在光滑路面上的停车距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model-Free Intelligent Control for Antilock Braking Systems on Rough Roads
Advances made in advanced driver assistance systems such as antilock braking systems (ABS) have significantly improved the safety of road vehicles. ABS enhances the braking and steerability of a vehicle under severe braking conditions. However, ABS performance degrades on rough roads. This is largely due to noisy measurements, the type of ABS control algorithm used, and the excitation of complex dynamics such as higher-order tire mode shapes that are neglected in the control strategy. This study proposes a model-free intelligent control technique with no modelling constraints that can overcome these unmodelled dynamics and parametric uncertainties. The double deep Q-learning network (DDQN) algorithm with the temporal convolutional network is presented as the intelligent control algorithm. The model is initially trained with a simplified single-wheel model. The initial training data are transferred to and then enhanced using a validated full-vehicle model including a physics-based tire model, and a three-dimensional (3D) rough road profile with added stochasticity. The performance of the newly developed ABS controller is compared to a baseline algorithm tuned for rough road use. Simulation results show a generalizable and robust control algorithm that can prevent wheel lockup over rough roads without significantly deteriorating the vehicle stopping distance on smooth roads.
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来源期刊
CiteScore
6.40
自引率
41.20%
发文量
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