Data information processing of traffic digital twins in smart cities using edge intelligent federation learning

计算机科学 背景(考古学) GSM演进的增强数据速率 交通标志识别 人工智能 智慧城市 智能交通系统 数据挖掘 算法 深度学习 机器学习 交通标志 符号(数学) 计算机安全 工程类 数学分析 土木工程 古生物学 生物 物联网 数学
作者
Weixi Wang,Fazhi He,Yulei Li,Shengjun Tang,Xiaoming Li,Jizhe Xia,Zhihan Lv
出处
期刊:Information Processing and Management [Elsevier]
卷期号:60 (2): 103171-103171 被引量:2
标识
DOI:10.1016/j.ipm.2022.103171
摘要

The present work analyzes the application of deep learning in the context of digital twins (DTs) to promote the development of smart cities. According to the theoretical basis of DTs and the smart city construction, the five-dimensional DTs model is discussed to propose the conceptual framework of the DTs city. Then, edge computing technology is introduced to build an intelligent traffic perception system based on edge computing combined with DTs. Moreover, to improve the traffic scene recognition accuracy, the Single Shot MultiBox Detector (SSD) algorithm is optimized by the residual network, form the SSD-ResNet50 algorithm, and the DarkNet-53 is also improved. Finally, experiments are conducted to verify the effects of the improved algorithms and the data enhancement method. The experimental results indicate that the SSD-ResNet50 and the improved DarkNet-53 algorithm show fast training speed, high recognition accuracy, and favorable training effect. Compared with the original algorithms, the recognition time of the SSD-ResNet50 algorithm and the improved DarkNet-53 algorithm is reduced by 6.37ms and 4.25ms, respectively. The data enhancement method used in the present work is not only suitable for the algorithms reported here, but also has a good influence on other deep learning algorithms. Moreover, SSD-ResNet50 and improved DarkNet-53 algorithms have significant applicable advantages in the research of traffic sign target recognition. The rigorous research with appropriate methods and comprehensive results can offer effective reference for subsequent research on DTs cities.

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