Internet of Things Security Early Warning Model Based on Deep Learning in Edge Computing Environment

Jiayong Zhong, Xiaohong Lv, Ke Hu,Yongtao Chen, Yingchun He

JOURNAL OF CIRCUITS SYSTEMS AND COMPUTERS(2024)

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摘要
Aiming at the problems of poor real-time processing and low security performance caused by the massive information of the Internet of things, a security early warning model of the Internet of things based on deep learning in edge computing environment is proposed. Firstly, the system architecture of the Internet of things is designed by using the edge computing technology, in which the intelligent router is used to obtain the network stub and send it to the nearest edge computing node for anomaly detection. Then, the attention mechanism is used to improve the long short-term memory network (LSTM), and the multidimensional LSTM model is constructed. At the same time, it is used to analyze the combined network data. Finally, according to the set threshold value, judge whether there is abnormal behavior in the network, and give early warning in time to take security defense measures. The experimental analysis of the proposed model based on NS2 simulation platform shows that its early warning success rate and time are 95.2% and 20.6ms, respectively, and it can detect and defend various network attacks well, with high security performance.
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关键词
Internet of things,edge computing environment,deep learning,safety warning,intelligent router,long short-term memory network,anomaly detection
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