Sliding mode control for overturning prevention and hardware-in-loop experiment of heavy-duty vehicles based on dynamical load transfer ratio prediction

Yongjie Lu, Yinfeng Han, Weihong Huang, Yang Wang
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引用次数: 3

Abstract

Aiming at the rollover risk of heavy-duty vehicles, an adaptive rollover prediction and control algorithm based on identification of multiple road adhesion coefficients is proposed, and the control effect has been verified by hardware-in-the-loop experiments. Based on the establishment of a 3 DOFs (Degree of freedom) vehicle dynamic model, the roll angle of the vehicle dynamic model is estimated in real time by using Kalman filter algorithm. In order to ensure the real-time operation of anti-rollover control strategy for multi-body dynamic heavy vehicle model, a sliding mode variable structure controller for anti-rollover of vehicles is designed to determine the optimal yaw moment. Specially, the recognition algorithm of road surface type is integrated into the control rollover algorithm. When the control system with road recognition algorithm recognizes whether the vehicle is in danger of rollover, it can not only adjust the state of the vehicle, but also shorten the time to reach the stable area of the vehicle's lateral load transfer rate by about 2 s. In order to further improve its adaptability and control accuracy, a Hardware-in-loop test platform for three-axis heavy-duty vehicles is built to verify the proposed anti-rollover control strategy. The results prove that the proposed control strategy can accurately predict the rollover risk and control the rollover in time.
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基于动态载荷传递比预测的重型车辆防倾覆滑模控制及硬件在环试验
针对重型车辆的侧翻风险,提出了一种基于多路面附着系数识别的自适应侧翻预测与控制算法,并通过硬件在环实验验证了该算法的控制效果。在建立3自由度车辆动力学模型的基础上,利用卡尔曼滤波算法实时估计车辆动力学模型的侧倾角。为了保证多体动态重型车辆模型防侧翻控制策略的实时性,设计了一种滑模变结构车辆防侧翻控制器,以确定最优偏航力矩。特别地,将路面类型识别算法集成到控制侧翻算法中。采用道路识别算法的控制系统在识别车辆是否存在侧翻危险时,不仅可以调整车辆的状态,还可以将车辆侧载转移率到达稳定区域的时间缩短约2s。为了进一步提高其自适应性和控制精度,建立了三轴重型车辆的硬件在环试验平台,对所提出的防侧翻控制策略进行了验证。结果表明,所提出的控制策略能够准确预测车辆侧翻风险,及时控制车辆侧翻。
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来源期刊
CiteScore
4.10
自引率
11.10%
发文量
38
审稿时长
>12 weeks
期刊介绍: The Journal of Multi-body Dynamics is a multi-disciplinary forum covering all aspects of mechanical design and dynamic analysis of multi-body systems. It is essential reading for academic and industrial research and development departments active in the mechanical design, monitoring and dynamic analysis of multi-body systems.
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