一种基于纵向力误差反馈的车辆侧向力的双曲切线滑模观测方法

Yunchao Wang, Siyi Huang, Shurong Zhou, Yun Liu
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引用次数: 0

摘要

轮胎侧向力的控制对车辆的横向稳定性至关重要。通过准确地观察侧向力,可以有效地防止车辆的侧滑和失控。为此,提出了一种新的双曲正切滑模观测算法。该算法采用轮胎纵向受力误差作为反馈,考虑了车辆参数的不确定性,不需要建立复杂的轮胎模型。首先,利用实际车辆线性加减速工况的实验数据,通过dSPACE对算法进行在线验证,并将不同观测算法的实验输出进行对比。在紧急避障条件和双线换挡条件下分别进行了仿真,验证了算法的准确性。仿真结果表明,该方法预测的轮胎侧向力与实际数据的误差小于5.35%,预测精度比滑模观测(SMO)的预测精度高38.78%,表明该方法优于SMO方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel hyperbolic tangent sliding mode observation of vehicle lateral force fed back by longitudinal force error
The tire lateral force control is crucial to vehicle lateral stability. Vehicle side slip and out of control can be prevented effectively by observing accurately the lateral force. Thus, a novel hyperbolic tangent sliding mode observation algorithm (NTSMO) is proposed. The algorithm adopts the longitudinal tire force error as feedback considering vehicle parameter uncertainties and without a complex tire model. First, the on-line verification of the algorithm was carried out by dSPACE to using the experimental data of the real vehicle linear acceleration and deceleration conditions, and comparison of experimental output with different observation algorithms. Furtherly, the simulation under emergency obstacle avoidance conditions and the double-line shifting conditions were conducted to verify the accuracy of the algorithm respectively. Simulation results show that the percentage errors between the tire lateral forces from the proposed NTSMO and the actual data are less than 5.35%, and the prediction accuracy of the NTSMO by 38.78% is higher than that of the sliding mode observation(SMO), which indicates that the NTSMO is superior to the SMO.
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