Modelling of driver's steering behaviour control in emergency collision avoidance by using focused time delay neural network

N. Hassan, H. Zamzuri, M. Ariff
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引用次数: 1

Abstract

This paper presents a modelling approach of human driving behavior in emergency rear-end collision avoidance focusing on steering maneuver. The target scenario is set up under real experimental environment and the naturalistic data from the experiment are collected. Dynamic Artificial Neural Network which is Focused Time Delay Neural Network (FTDNN) is used to model drivers steering behaviour. From the obtain results, it can be concluded that the FTDNN model able to simulate drivers steering maneuver in rear-end collision avoidance with the accuracy of which the coefficient determination is 99% (0.99). With further study, this model would beneficial to design motion control strategy to improve Advance Driver Assistance System (ADAS) in collision avoidance system.
基于聚焦时滞神经网络的紧急避碰驾驶员转向行为控制建模
本文提出了一种以转向机动为重点的紧急追尾避碰人类驾驶行为建模方法。在真实的实验环境下建立目标场景,收集实验的自然数据。动态人工神经网络即聚焦时滞神经网络(FTDNN)用于驾驶员转向行为建模。从得到的结果可以看出,FTDNN模型能够模拟追尾避碰驾驶员的转向机动,其确定系数的精度为99%(0.99)。通过进一步的研究,该模型将有助于设计运动控制策略,以改进防撞系统中的高级驾驶辅助系统(ADAS)。
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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