深库计算在网络安全和无线通信中的新应用

K. Hamedani, Zhou Zhou, Kangjun Bai, Lingjia Liu
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引用次数: 3

摘要

本章介绍了深储层计算(RC)系统在网络安全和无线通信中的新应用。RC系统是一类新的递归神经网络(rnn)。由于梯度的消失/爆炸,传统rnn的训练非常具有挑战性。然而,RC系统更容易训练,并且与传统rnn相比表现出相似甚至更好的性能。研究网络安全和无线通信领域的时空相关性是十分必要的。因此,RC模型是探索时空相关性的良好选择。在本章中,我们分别探讨了延迟反馈库(DFRs)和回波状态网络(ESNs)在智能电网网络安全中的应用和性能,以及MIMO-OFDM系统中的符号检测。DFRs和esn是两种不同的RC模型。我们还介绍了DFRs的尖峰结构,因为尖峰人工神经网络更节能,在生物学上也更合理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Novel Applications of Deep Reservoir Computing in Cyber-Security and Wireless Communication
This chapter introduces the novel applications of deep reservoir computing (RC) systems in cyber-security and wireless communication. The RC systems are a new class of recurrent neural networks (RNNs). Traditional RNNs are very challenging to train due to vanishing/exploding gradients. However, the RC systems are easier to train and have shown similar or even better performances compared with traditional RNNs. It is very essential to study the spatio-temporal correlations in cyber-security and wireless communication domains. Therefore, RC models are good choices to explore the spatio-temporal correlations. In this chapter, we explore the applications and performance of delayed feedback reservoirs (DFRs), and echo state networks (ESNs) in the cyber-security of smart grids and symbol detection in MIMO-OFDM systems, respectively. DFRs and ESNs are two different types of RC models. We also introduce the spiking structure of DFRs as spiking artificial neural networks are more energy efficient and biologically plausible as well.
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