Dynamic car following data collection and noise cancellation based on the Kalman smoothing

Xiaoliang Ma, I. Andreasson
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引用次数: 26

Abstract

This paper introduces a data collection method that we used in a project on modeling driver behavior in microscopic traffic simulation. A modern instrumented vehicle was employed to study a crucial element of driver behavior, that of car following, on Swedish roads. The collected car following data shows noisy patterns. To eliminate the measurement noise, Kalman smoothing algorithm is applied to the state-space formulation of the physical states (acceleration, speed and position) of tracked vehicles. The smoothed data shows clear car following patterns and has been further applied in our car following model calibration and validation study.
基于卡尔曼平滑的动态汽车跟随数据采集与噪声消除
本文介绍了在微观交通仿真中驾驶员行为建模项目中使用的一种数据收集方法。在瑞典的道路上,一辆现代仪表车辆被用来研究驾驶员行为的一个关键因素,即汽车跟随。收集到的汽车跟踪数据显示出嘈杂的模式。为了消除测量噪声,将卡尔曼平滑算法应用于履带车辆物理状态(加速度、速度和位置)的状态空间表述。平滑后的数据显示出清晰的跟车模式,并进一步应用于我们的跟车模型标定和验证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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