Department of Information Engineering, Tongling Polytechnic, Tongling 244061, Anhui, China.
College of Mathematics and Computer Science, Tongling University, Tongling 244061, Anhui, China.
Comput Intell Neurosci. 2022 Jun 15;2022:6420799. doi: 10.1155/2022/6420799. eCollection 2022.
Nowadays, the problem of road traffic safety cannot be ignored. Almost all major cities have problems such as poor traffic environment and low road efficiency. Large-scale and long-term traffic congestion occurs almost every day. Transportation has developed rapidly, and more and more advanced means of transportation have emerged. However, automobile is one of the main means of transportation for people to travel. In the world, there are serious traffic jams in almost all cities. The excessive traffic flow every day leads to the paralysis of the urban transportation system, which brings great inconvenience and impact to people's travel. Various countries have also actively taken corresponding measures, i.e., traffic diversion, number restriction, or expanding the scale of the road network, but these measures can bring little effect. Traditional intelligent traffic flow forecasting has some problems, such as low accuracy and delay. Aiming at this problem, this paper uses the model of the combination of Internet of Things and big data to apply and analyze its social benefits in intelligent traffic flow forecasting and analyzes its three-tier network architecture model, namely, perception layer, network layer, and application layer. Research and analyze the mode of combining cloud computing and edge computing. From the multiperspective linear discriminant analysis algorithm of the combination method of combining the same points and differences between data and data into multiple atomic services, intelligent traffic flow prediction based on the combination of Internet of Things and big data is performed. Through the monitoring and extraction of relevant traffic flow data, data analysis, processing and storage, and visual display, improve the accuracy and effectiveness and make it easier to improve the prediction accuracy of overall traffic flow. The traffic flow prediction of the system of Internet of Things and big data is given through the case experiment. The method proposed in this paper can be applied in intelligent transportation services and can predict the stability of transportation and traffic flow in real time so as to optimize traffic congestion, reduce manual intervention, and achieve the goal of intelligent traffic management.
如今,道路交通安全问题不容忽视。几乎所有大城市都存在交通环境差、道路效率低等问题。每天几乎都会发生大规模、长时间的交通拥堵。交通发展迅速,越来越多的先进交通工具出现。然而,汽车是人们出行的主要交通工具之一。在世界范围内,几乎所有城市都存在严重的交通堵塞。每天过多的交通流量导致城市交通系统瘫痪,给人们的出行带来了极大的不便和影响。各国也积极采取相应措施,即交通分流、数量限制或扩大路网规模,但这些措施收效甚微。传统的智能交通流量预测存在准确性和延迟等问题。针对这一问题,本文利用物联网和大数据相结合的模型,应用并分析其在智能交通流量预测中的社会效益,并分析其三层网络架构模型,即感知层、网络层和应用层。研究并分析云计算与边缘计算相结合的模式。从数据与数据之间的同异点组合的多视角线性判别分析算法出发,对物联网与大数据相结合的智能交通流量预测进行研究。通过对相关交通流量数据的监测和提取、数据分析、处理和存储以及可视化显示,提高了整体流量预测的准确性和有效性,使其更容易提高整体交通流量的预测精度。通过案例实验给出了物联网和大数据系统的交通流量预测。本文提出的方法可以应用于智能交通服务中,可以实时预测交通和交通流量的稳定性,从而优化交通拥堵,减少人工干预,实现智能交通管理的目标。