Pre-Crash Sensing and Warning System in Hill Station

Mohd Javeed Mehdi, Suram Purna Sai Chandra, M. Sravya, Gooty Hamsitha, Veggilapu Sai Krishna
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Abstract

Accidents are more common in mountainous areas, and as a result, more people lose their lives. The roads in this are a are curved and steep, making it difficult for drivers to see vehicles on the other side. Most accidents occur in hill stations, according to the report (i.e., 13% of all accidents). Because of this, we came up with the concept of utilizing embedded systems technology to solve the problem at hand. A model for reducing the number of accidents in hill stations is proposed in this research. Hair bend pin curves, valley points, and vehicle skidding are the three most common accident sites in the mountains. Our proposed system is created utilizing an Arduino Uno board with IR sensors and Ultrasonic (UR) sensors, and we are proposing to fix it at these dangerous spots. On either side of the road's hairpin bend, IR sensors detect vehicle movement and relay that information to a traffic module on the other side. The valley point has a UR sensor, which detects vehicles approaching the valley point and sounds an alert with buzzers. The primary goal of the proposed model is to reduce the death rate in mountainous stations by preventing accidents.
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山站碰撞前感知与预警系统
事故在山区更常见,因此,更多的人失去了生命。这里的道路弯弯曲曲且陡峭,司机很难看到对面的车辆。根据报告,大多数事故发生在山间车站(即占所有事故的13%)。因此,我们提出了利用嵌入式系统技术来解决手头问题的概念。本文提出了一个减少山地车站交通事故数量的模型。发弯、发夹曲线、山谷点和车辆打滑是山区最常见的三个事故地点。我们提出的系统是利用带有红外传感器和超声波(UR)传感器的Arduino Uno板创建的,我们建议将其固定在这些危险的地方。在道路的发夹弯道两侧,红外传感器检测车辆的移动,并将信息传递给另一侧的交通模块。山谷点有一个UR传感器,可以探测到接近山谷点的车辆,并发出蜂鸣器警报。该模型的主要目标是通过预防事故来降低山区车站的死亡率。
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