速度控制及交通管理系统

Aneesh Kar, Soujanya Syamal, Suvraneel Chatterjee, Antarika Basu, Himadri Nath Saha, Srijata Choudhuri
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引用次数: 0

摘要

本文是基于电子汽车系统,像任何其他电动汽车,有一些额外的,新的功能,将电子汽车到一个全新的水平。速度管理,从而促进交通管理一直是我们面临的一个非常大的挑战。交通的安全和畅通是非常重要的。为了克服这些困难,有必要安装一个智能车辆系统,它将负责调节车辆的速度和管理交通。首先,为了控制速度,我们需要设置一个基于数据分析、机器学习、深度学习和物联网的三条件层。这个三层系统将获得汽车的最大速度,超过这个速度司机将无法驾驶。获得最高速度限制将取决于特定道路的规定最高速度限制,汽车正在行驶,目前道路的交通密度和附近交通杆的交通状况,以及其他车辆相对于相关车辆的位置等因素。所有这些主要因素都将归因于获得安全的最高速度限制,因为三层系统将同时工作,使驾驶员能够在此限制内安全驾驶。由于速度管理可以达到,这将归因于交通的管理。物联网的知识是必要的,它将连接汽车和附近的交通杆。一旦它们连接起来,汽车就会收到信号和更新,关于交通状况,根据信号的颜色,汽车将相应地调整速度或停车。这些是提出的新车辆系统的主要方面。因此,该系统可以证明是非常有益的。
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SPEED CONTROLLING & TRAFFIC MANAGEMENT SYSTEM (SCTMS)
This paper is based on Electronic Vehicle System, like any other electric vehicle, with certain additional, new features which will take electronic vehicles to a whole new level. Speed management, thereby contributing to traffic management has always been a very big challenge to us. The safety and the smooth flow of traffic is very much essential. To overcome these huddles, it is necessary to device a smart vehicle system, which will be responsible to regulate the speed of the vehicle and manage the traffic. Firstly, to control the speed, we need to device a three condition layer, which is based on Data Analytics, Machine Learning, Deep Learning and IOT. This three-layered System will get the maximum speed of the car, beyond which the driver will be unable to drive. Obtaining the maximum speed limit will depend on factors like the prescribed maximum speed limit of the particular road, the car is running on, the present traffic density of the road and the traffic situation as per the nearby traffic pole, the position of the other cars with respect to the concerned car. All these major factors will attribute to obtaining a safe maximum speed limit, as the three-layered system will work simultaneously, enabling the driver to drive safely within this limit. Since speed management can be reached, this will attribute to the management of the traffic. The knowledge of IOT is necessary, which will connect the car and the nearby traffic pole. Once they are connected, the car will receive signals and updates, regarding the traffic situation and based on the color of the signal the car will adjust it's speed or stop, accordingly. These are the major aspects of this proposed new vehicle system. Thus, the System can prove to be very much beneficial.
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