Sustainable Time Series Model for Vehicular Traffic Trends Prediction in Metropolitan Network

Adwitiya Sinha, Ratik Puri, Udit Balyan, Ritik Gupta, Ayushi Verma
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引用次数: 1

Abstract

With the widespread of technological evolution in transportation industry, the escalation of vehicular traffic has increasingly become prevalent in the metropolitan cities. Developments of automobile technology and rise in vehicles on the streets have made the traffic management quite challenging. This makes time series analysis of traffic-flows, an integral part of Intelligent Transportation System (ITS). The main objective is to focus on managing traffic conditions and preventing congestion havoc on roads. Our research focuses on analysis of the traffic patterns for predicting transport trends in future, subject to the trend of initial traffic instances. For implementing the aspects of ITS effectively, our proposed approach includes access to the online sensor data of traffic flows recorded in specific location. The analysis of sensory data helps to build traffic prediction model, which can be further used to recommend alternative routes, thereby responding to traffic congestions effectively.
城市网络车辆交通趋势预测的可持续时间序列模型
随着交通运输技术的广泛发展,大城市的车辆流量升级问题日益普遍。汽车技术的发展和街道上车辆的增加给交通管理带来了很大的挑战。这使得交通流量的时间序列分析成为智能交通系统(ITS)的一个重要组成部分。主要目标是集中管理交通状况,防止道路拥堵。我们的研究重点是分析交通模式,以预测未来的交通趋势,受初始交通实例的趋势。为了有效地实施ITS的各个方面,我们建议的方法包括访问在特定位置记录的交通流量的在线传感器数据。通过对感知数据的分析,建立交通预测模型,并据此推荐备选路线,从而有效应对交通拥堵。
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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