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Machine learning based model for traffic prediction in smart cities

机译:基于机器学习的智慧城市交通预测模型

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A smart city can be defined as a city that uses distributed sensors to monitor and control the urban environment by collecting real-time information. Using such smart devices improves the quality of living and facilitates the process of decision making. Smart cities provide solutions to environmental issues such as amount of wastage, energy consumption, traffic congestion, and pollution. The traffic issue is a one important concern in any city due to the increasing number of populations using vehicles which lead to traffic congestions, accidents, and delays. Traffic issues can also cause a high level of pollution and fuel consumption. To solve such issues, roads should be managed by monitoring, analyzing and predicting the traffic flow. In this research, we propose a machine learning based model for traffic flow prediction in smart cities, particularly in the context of “NEOM” megacity that is born from Saudi Arabia's vision of 2030. The proposed model combines previous methods of traffic prediction to produce robust traffic prediction model that can be used in NEOM megacity to achieve better traffic management.
机译:智慧城市可以定义为使用分布式传感器通过收集实时信息来监视和控制城市环境的城市。使用此类智能设备可改善生活质量,并促进决策过程。智慧城市为环境问题提供解决方案,例如浪费量,能源消耗,交通拥堵和污染。由于使用车辆的人口数量增加,导致交通拥堵,事故和延误,因此交通问题在任何城市都是一个重要的问题。交通问题也可能导致高水平的污染和燃料消耗。为了解决这些问题,应该通过监视,分析和预测交通流量来管理道路。在这项研究中,我们提出了一种基于机器学习的智能城市交通流量预测模型,尤其是在沙特阿拉伯2030年愿景诞生的“ NEOM”特大城市的背景下。该模型结合了以前的交通预测方法以产生强大的可以在NEOM大城市中使用的流量预测模型,以实现更好的流量管理。

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