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首页> 外文期刊>Journal of terramechanics >Road surface condition identification approach based on road characteristic value
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Road surface condition identification approach based on road characteristic value

机译:基于道路特征值的路面状况识别方法

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摘要

The real-time knowledge of road friction information has a significant role in vehicle dynamics control. In this paper, with the application of Burckhardt model, roads are classified into six types and a road identification approach based on "road characteristic value" is developed. Six kinds of road surface characteristic intervals which represent typical road characterization are proposed according to the closed area under the segment of road friction coefficient-slip ratio curve before a pre-defined slip ratio. In addition, a varying road monitoring and identification algorithm is proposed to identify varying road surface conditions, composing of an integral road surface identification approach with road characteristic value method. A vehicle dynamics model of 14 DOF including the excitation of road roughness is built, and the effectiveness of the approach is verified by the braking simulation tests on both a uniform friction coefficient uneven road and a variable friction coefficient uneven road. The simulation results show that the proposed approach can identify current road surface conditions effectively including road type, maximum road friction coefficient as well as optimal slip ratio, and it is robust to external disturbances. The application of road identification results in the optimal slip ratio control of vehicle electronic control braking system achieves good performance.
机译:道路摩擦信息的实时知识在车辆动力学控制中具有重要作用。本文利用Burckhardt模型,将道路分为六类,并提出了一种基于“道路特征值”的道路识别方法。根据在预定义的滑移率之前的道路摩擦系数-滑移率曲线段下的封闭区域,提出了代表典型道路特征的六种路面特征间隔。此外,提出了一种变化的道路监测和识别算法来识别变化的路面状况,该方法结合了道路特征值法和整体道路识别方法。建立了包括路面不平整激励在内的14自由度车辆动力学模型,并通过在均匀摩擦系数不均匀道路和可变摩擦系数不均匀道路上的制动仿真测试,验证了该方法的有效性。仿真结果表明,该方法可以有效地识别当前路面状况,包括道路类型,最大道路摩擦系数以及最佳滑移率,并且对外界干扰具有鲁棒性。道路识别的应用在车辆电控制动系统的最佳滑移率控制中取得了良好的性能。

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