Intelligent Traffic Management System for Smart Cities

Mahmoud G. Ismail, S. Zaki
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引用次数: 1

Abstract

rapid urbanization and the growing population in smart cities pose significant challenges to the management of urban traffic. In recent years, there has been an increasing interest in developing intelligent traffic management systems that leverage advanced machineries, such as the Internet of Things (IoT), and machine learning (ML), to enhance the efficiency and effectiveness of traffic management in smart cities. This paper proposes an intelligent traffic management (ITM) system for smart cities that integrates various computing paradigms to provide real-time traffic information, optimize traffic flow, and improve road safety. The suggested system utilizes an innovative system for the predicting the traffic flows with the goal of enhancing the current level of traffic management in smart cities. An enhanced convolutional autoencoder network is incorporated into the proposed system as a means of extracting the spatial representations contained in traffic flows. Additionally, by the utilization of a refined gated learning module, it possesses the capability of accurately recording temporal dynamics. Our system is evaluated using real-world traffic data, and the results demonstrate its effectiveness in improving traffic flow and reducing congestion in smart cities. Our system has the potential to significantly enhance the performance of traffic management systems in smart cities, decrease traffic crowding, and progress the safety of roads in smart cities.
面向智慧城市的智能交通管理系统
快速城市化和智慧城市人口的增长对城市交通管理提出了重大挑战。近年来,人们对开发智能交通管理系统越来越感兴趣,该系统利用先进的机器,如物联网(IoT)和机器学习(ML),以提高智慧城市交通管理的效率和有效性。本文提出了一种集成多种计算范式的智慧城市智能交通管理(ITM)系统,以提供实时交通信息,优化交通流,提高道路安全。该系统利用一种创新的系统来预测交通流量,目的是提高智慧城市当前的交通管理水平。一个增强的卷积自编码器网络被纳入到所提出的系统中,作为提取交通流中包含的空间表示的一种手段。此外,通过使用一个改进的门控学习模块,它具有准确记录时间动态的能力。我们的系统使用现实世界的交通数据进行了评估,结果证明了它在改善交通流量和减少智能城市拥堵方面的有效性。我们的系统有潜力显著提高智慧城市交通管理系统的性能,减少交通拥挤,并提高智慧城市道路的安全性。
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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CiteScore
1.70
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