AI-driven blind signature classification for IoT connectivity: a deep learning approach

Date

2022-01-31

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IEEE

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Article

ISSN

1536-1276

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Pan J, Ye N, Yu H, et al., (2022) AI-driven blind signature classification for IoT connectivity: a deep learning approach, IEEE Transactions on Wireless Communications, Volume 21, Number 8, August 2022, pp. 6033-6047

Abstract

Non-orthogonal multiple access (NOMA) promises to fulfill the fast-growing connectivities in future Internet of Things (IoT) using abundant multiple-access signatures. While explicitly notifying the utilized NOMA signatures causes large signaling cost, blind signature classification naturally becomes a low-cost option. To accomplish signature classification for NOMA, we study both likelihood- and feature-based methods. A likelihood-based method is firstly proposed and showed to be optimal in the asymptotic limit of the observations, despite high computational complexity. While feature-based classification methods promise low complexity, efficient features are non-trivial to be manually designed. To this end, we resort to artificial intelligence (AI) for deep learning-based automatic feature extraction. Specifically, our proposed deep neural network for signature classification, namely DeepClassifier, establishes on the insights gained from the likelihood-based method, which contains two stages to respectively deal with a single observation and aggregate the classification results of an observation sequence. The first stage utilizes an iterative structure where each layer employs a memory-extended network to explicitly exploit the knowledge of signature pool. The second stage incorporates the straight-through channels within a deep recurrent structure to avoid information loss of previous observations. Experiments show that DeepClassifier approaches the optimal likelihood-based method with a reduction of 90% complexity.

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Keywords

Non-orthogonal multiple access, signature classification, deep learning, recurrent neural network, automatic feature extraction

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Attribution-NonCommercial 4.0 International

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