基于LSTMs-AE的物联网入侵检测深度学习

Yingfei Xu, Yong Tang, Qiang Yang
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引用次数: 7

摘要

随着5G时代的到来,物联网(IoT)在当今社会得到了广泛的关注。然而,由于设备的硬件问题,物联网可能存在一些安全问题。而现有的入侵检测方法很少考虑数据的时间序列特征。本文提出了一种基于长短期记忆(LSTMs-AE)的自编码器异常监测模型,该模型利用长短期记忆捕获时间序列特征,利用自编码器的特征学习能力进行入侵检测。实验表明,该模型比普通的自动编码器具有更好的入侵检测性能,在大多数数据集中,该方案的准确率超过0.95。
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Deep Learning for IoT Intrusion Detection based on LSTMs-AE
With the advent of 5G era, The Internet of Things (IoT) is obtaining considerable attention in all walks of life nowadays. However, due to the hardware problems of devices, there may exists some security problems in IOT. While existing intrusion detection methods rarely consider the time series feature of the data. In this paper, we propose an anomaly monitoring model for Autoencoder based on Long-Short Term Memory (LSTMs-AE), in which LTSM is exploited to capture time-series features and the intrusion detection is performed by the feature learning ability of Autoencoder. Thorough experiments demonstrate that our model has better intrusion detection performance than ordinary Autoencoder, as in most of the dataset the accuracy rate of proposed scheme exceeds 0.95.
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