4.8 Article

Deep-Learning-Enabled Security Issues in the Internet of Things

期刊

IEEE INTERNET OF THINGS JOURNAL
卷 8, 期 12, 页码 9531-9538

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2020.3007130

关键词

Security; Feature extraction; Deep learning; Training; Noise reduction; Internet of Things; Dimensionality reduction; Deep learning; Internet of Things (IoT); intrusion security detection; SDAE

资金

  1. National Natural Science Foundation of China [61902203]
  2. Key Research and Development Plan-Major Scientific and Technological Innovation Projects of Shandong Province [2019JZZY020101]

向作者/读者索取更多资源

The study constructed a hierarchical intrusion security detection model based on the autoencoder, achieving high accuracy and low false-negative and false-positive rates. Compared with other deep learning algorithms and common feature dimension reduction methods, the model demonstrated superior performance.
In order to explore the application value of deep learning denoising autoencoder (DAE) in Internet-of-Things (IoT) fusion security, in this study, a hierarchical intrusion security detection model stacked DAE supporting vector machine (SDAE-SVM) is constructed based on the three-layer neural network of self-encoder. The sample data after dimension reduction are obtained by layer by layer pretraining and fine-tuning. The traditional deep learning algorithms [stacked noise autoencoder (SNAE), stacked autoencoder (SAE), stacked contractive autoencoder (SCAE), stacked sparse autoencoder (SSAE), deep belief network (DBN)] are introduced to carry out the comparative simulation with the model in this study. The results show that when the encoder in the model is a 4-layer network structure, the accuracy rate (Ac) of the model is the highest (97.83%), the false-negative rate (Fn) (1.27%) and the false-positive rate (Fp) (3.21%) are the lowest. When the number of nodes in the first hidden layer is about 110, the model accuracy is about 98%. When comparing the model designed in this study with the common feature dimension reduction methods, the Ac, Fn, and Fp of this model are the best, which are 98.12%, 3.21%, and 1.27%, respectively. When compared with other deep learning algorithms of the same type, the recognition rate, Ac, error rate, and rejection rate show good results. In multiple data sets, the recognition rate, Ac, error rate, and rejection rate of the model in this study are always better than the traditional deep learning algorithms. In conclusion, when deep learning SDAE is applied to IoT convergence-based intrusion security detection, the detection load can be reduced, the detection effect can be improved, and the operation is more secure and stable.

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