驾车通过弯道:检测不安全驾驶模式和预防重型车辆侧翻

E.M.A.K. Siriwardana, S. K. Amila, S.G.L.D.H. Kaushalya, S. Chandrasiri, Vijani S. Piyawardana
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引用次数: 1

摘要

道路交通事故在当今世界是很平常的。然而,重型货车侧翻已成为世界性的重大问题。根据收集的数据、使用的来源和几个关键因素,导致了HGV的倾覆。事故翻车的原因是反应时间过长、驾驶能力下降、驾驶经验不足、驾驶员粗心大意等。进一步考虑,过度转向导致翻车、转向不够保持车道、超速、重心过高、天气状况、道路状况和道路弯道是导致长车翻车的主要原因。因此,本文提出了机器学习过程来克服这些问题并减少HGV侧翻。拟议的系统包括一个车辆装备系统和一个地面操作监视摄像机。车载系统可以根据车辆类型和道路曲率确定车辆应该行驶的安全速度,并可以检测道路裂缝并通过向车辆仪表板屏幕发送通知通知驾驶员。地面驾驶员支持系统可以检测重型载重车的安全速度,确定影响重型载重车侧翻事故的各种交通参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driving Through a Bend: Detection of Unsafe Driving Patterns and Prevention of Heavy Good Vehicle Rollovers
Road Traffic Crashes are simply ordinary within the present world. However, heavy goods vehicles (HGV) rollover has become a significant problem worldwide. Depending on the data collected, the sources used, and several key factors contribute to HGV overturning. Accidents overturn due to longer reaction time, shriveled driving performance, lack of driving experience, and driver carelessness. In further consideration, over-steering to turning over, not steering enough to stay in lane, over speed, high located center of gravity, weather condition, road condition, and the road's curves are the most contributing reasons to the overturning of a long vehicle. Thus, this paper proposes machine learning processes to overcome these problems and reduce the HGV rollovers. The proposed system includes a vehicle-equipped system and a ground-based operational surveillance camera. The Vehicle-equipped system can determine the safe speed at which the vehicle should travel according to the type of vehicle and curvature of the road and can detect road cracks and notify the driver by sending the notification to the vehicle dashboard screen. The ground-based driver support system can detect safe speed for HGVs and determine various other traffic parameters which can affect the HGV rollover accidents.
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