印度大城市实时交通拥堵预测与避免系统

Mayank Singh, V. Srivastava
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引用次数: 1

摘要

传感器和数据的扩展是交通模拟器的催化剂,有助于实时监控和管理交通系统,以提高关键性能指标和整体效率。在过去的几十年里,印度的事故数量迅速增加。由于这些事故,大量的损失发生在基础设施、资源和人员上。在本文中,我们提出了一个印度城市交通系统的架构框架,以收集,存储,数据挖掘和获取信息,以避免交通事故,拥堵和实时预测替代路线。机器学习和数据挖掘技术的结合用于实现所提出的系统。实施的系统将有助于减少交通事故,并建议替代路线,以避免印度城市交通网络实时运行的交通拥堵。实时数据被输入到交通模拟中,从而生成未来道路网络的状态和避免拥堵的替代路线。由于系统的结果需要既快于实时又准确,因此仿真执行的加速和预测模型的准确性至关重要。
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Prediction and avoidance of real-time traffic congestion system for Indian metropolitan cities
The expansion of sensors and data is the catalyst for traffic simulators to help monitor and manage transportation systems in real-time to improve key performance metrics and overall efficiency. The number of accidents has rapidly increased in Indian perspective over the past few decades. Owing the accidents, a large number of losses occur in form of infrastructure, resources and people. In this paper, we have proposed an architectural framework for Indian urban transport system to gather, store, data mining and getting information to avoid the traffic accidents, congestions and predicting the alternative routes in real time. A combination of machine learning and data mining techniques are used to implement the proposed system. The implemented system will help in reduction of traffic accidents and suggesting alternative routes to avoid the traffic congestion for an Indian urban transport network operation in real-time. Real-time data is fed into a traffic simulation, which generates future states of the road network and alternative routes to avoid congestion. Because the results of the system need to be both faster than real-time and accurate, the acceleration of the simulation execution and the accuracy of the prediction models are critical.
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来源期刊
International Journal of Vehicle Information and Communication Systems
International Journal of Vehicle Information and Communication Systems Computer Science-Computer Science Applications
CiteScore
1.20
自引率
0.00%
发文量
15
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