An intelligent driver warning system for vehicle collision avoidance

被引:28
作者
An, PE [1 ]
Harris, CJ [1 ]
机构
[1] UNIV SOUTHAMPTON,DEPT AERONAUT & ASTRONAUT,SOUTHAMPTON SO9 5NH,HANTS,ENGLAND
来源
IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART A-SYSTEMS AND HUMANS | 1996年 / 26卷 / 02期
关键词
I. INTRODUCTION Implementating collision avoidance for road driving is a complex task because it requires not only an accurate perception of the road environment and but also prompt execution of control actions which can satisfy the kinematics constraints of the controlled vehicle. With rapid advances in computer and electronics technologies; there has been a growing research interest in automating the procedures for detecting and avoiding obstacles [71; 91; lo; 19; 21; 22; 25]. Autonomous road driving is one such application which can potentially improve the driver’s comfort and safety by incorporating an intelligent copilot to handle scenario perception; human computer interface; and vehicle steering and acceleration control; and thus the driver no longer plays a direct role in low level control loops. An alternative approach to facilitate collision avoidance for road driving is through intelligent driver warning. This approach is indirect because the driver retains direct control of the vehicle; and the system Manuscript received November 1; 1993; revised August 21; 1994; and December 28; 1994. This work was sponsored by the Prometheus project under Lucas; Jaguar and Pilkington financial support;
D O I
10.1109/3468.485752
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
This paper describes the basic architecture of an intelligent driver warning system which embodies an adaptive driver model for indirect collision avoidance, In this study, the driver modeling objective is focused only on longitudinal car-following, and the model inputs are chosen to be the past history of throttle angle, controlled vehicle's speed, range and range rate to the front vehicle whereas the model output is chosen to be the current throttle angle. An artificial neural network called Cerebellar Model Articulation Controller (CMAC) and a conventional linear model (CLM) are independently applied to model the real driver data taken from test track and motorway environments, The CMAC model is chosen because of its nonlinear modeling capability, on-line learning convergence and minimum learning interference characteristics, whereas the linear model is chosen as a control benchmark to examine the nonlinear characteristic of the driver's behavior. The modeling capabilities are then evaluated based on one-step ahead prediction error performances over the training and testing sets, learning curves and correlation based model validation techniques, Modeling results suggest that the past history of throttle angle plays a critical role in reducing the deviation of the error correlation, which in turn suggest that the throttle dynamics are generally slow for road driving. Also, the time scale dependency of the model on the driver's behavior varies significantly from the test track to motorway environment, In the driver modeling experiment, the time scale was chosen such that the deviation of the error correlation was minimized, The test track results suggest that the chosen inputs are indeed relevant variables for modeling the driver's behavior, Unlike that of the CLM, the degree of the error deviation of the CMAC model was found to be acceptable for the test track scenario, implying a significant nonlinear coupling of the throttle output with the speed, range and range rate data, Whereas for the motorway data, the modeling performance for both models is comparable, and the time scale of the driver model is approximately three times longer than that used in the test track data.
引用
收藏
页码:254 / 261
页数:8
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