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从测量的驾驶员转向行为中无偏差地识别线性模型预测转向控制器。

Bias-free identification of a linear model-predictive steering controller from measured driver steering behavior.

作者信息

Keen Steven D, Cole David J

出版信息

IEEE Trans Syst Man Cybern B Cybern. 2012 Apr;42(2):434-43. doi: 10.1109/TSMCB.2011.2167509. Epub 2012 Feb 10.

Abstract

Recent developments in modeling driver steering control with preview are reviewed. While some validation with experimental data has been presented, the rigorous application of formal system identification methods has not yet been attempted. This paper describes a steering controller based on linear model-predictive control. An indirect identification method that minimizes steering angle prediction error is developed. Special attention is given to filtering the prediction error so as to avoid identification bias that arises from the closed-loop operation of the driver-vehicle system. The identification procedure is applied to data collected from 14 test drivers performing double lane change maneuvers in an instrumented vehicle. It is found that the identification procedure successfully finds parameter values for the model that give small prediction errors. The procedure is also able to distinguish between the different steering strategies adopted by the test drivers.

摘要

本文综述了带预瞄的驾驶员转向控制建模的最新进展。虽然已经展示了一些与实验数据的验证,但尚未尝试严格应用形式化系统辨识方法。本文描述了一种基于线性模型预测控制的转向控制器。开发了一种使转向角预测误差最小化的间接辨识方法。特别关注对预测误差进行滤波,以避免因驾驶员-车辆系统闭环运行而产生的辨识偏差。该辨识程序应用于从14名测试驾驶员在一辆装有仪器的车辆中进行双车道变换操作所收集的数据。结果发现,该辨识程序成功找到了能给出小预测误差的模型参数值。该程序还能够区分测试驾驶员所采用的不同转向策略。

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