Modulation Classification of Active Attacks in Internet of Things: Lightweight MCBLDN With Spatial Transformer Network

被引:9
|
作者
Zhang, Ruiyun [1 ]
Chang, Shuo [1 ]
Wei, Zhiqing [1 ]
Zhang, Yifan [1 ]
Huang, Sai [1 ]
Feng, Zhiyong [1 ]
机构
[1] Beijing Univ Posts & Telecommun, Minist Educ, Key Lab Universal Wireless Commun, Beijing 100876, Peoples R China
基金
北京市自然科学基金;
关键词
Convolutional neural networks; Internet of Things; Modulation; Deep learning; Transformers; Time-varying channels; Recurrent neural networks; Active attack; automatic modulation classification (AMC); frequency offset and phase offset; physical-layer threat; spatial transformer network (STN); time-varying channel; AUTOMATIC MODULATION; ALGORITHM;
D O I
10.1109/JIOT.2022.3163892
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The Internet of Things (IoT) permeates every aspect of our daily lives as billions of interconnected devices are deployed in the physical world. However, IoT networks operate in an untrusted environment and often suffer from many malicious active attacks. Automatic modulation classification (AMC), which can identify the modulation format of intercepted signals without prior knowledge, is a vital technology in countering physical-layer threats of IoT. However, most of the existing algorithms assume the channel is time invariant, and the AMC in time-varying channels is not been well studied. To deal with this dilemma, a novel AMC algorithm MCBLDN consisting of multiple convolutional neural networks (CNNs), a bidirectional long short-term memory network (BLSTM), and a deep neural network (DNN) is proposed. In MCBLDN, a multislot constellation diagram (CD) method is proposed to extract time-evolution characteristics for generating more discriminative features. Specifically, different grayscale subimages generated by slotted CDs are processed serially by their respective CNNs. Therefore, MCBLDN is overparameterized and time consuming. In addition, the frequency offset and phase offset caused by time-varying channels are neglected in MCBLDN, which is detrimental to the performance of AMC. To address the mentioned disadvantages, a lightweight MCBLDN with a spatial transformer network (SLCBDN) is proposed. First, the multiple CNNs in MCBLDN are pruned into a lightweight classification model, and the input data are rearranged to facilitate parallel processing by the lightweight CNN. Additionally, the spatial transformer network (STN) is utilized to reduce the influence of frequency offset and phase offset. Numerical results verify that the proposed method achieves superior performance and higher speed compared to the baseline algorithm MCBLDN.
引用
收藏
页码:19132 / 19146
页数:15
相关论文
共 50 条
  • [1] Modulation Classification of Active Attack Signals for Internet of Things Using GP-CNN Network
    Ji, Kejia
    Chang, Shuo
    Huang, Sai
    Chen, Hao
    Jia, Shao
    Lu, Hua
    2021 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS WORKSHOPS (ICC WORKSHOPS), 2021,
  • [2] A lightweight deep learning architecture for automatic modulation classification of wireless internet of things
    Han, Jia
    Yu, Zhiyong
    Yang, Jian
    IET COMMUNICATIONS, 2024, : 1220 - 1230
  • [3] A Lightweight Modulation Classification Network Resisting White Box Gradient Attacks
    Zhang, Sicheng
    Lin, Yun
    Bao, Zhida
    Fu, Jiangzhi
    SECURITY AND COMMUNICATION NETWORKS, 2021, 2021
  • [4] Identification of Active Attacks in Internet of Things: Joint Model- and Data-Driven Automatic Modulation Classification Approach
    Huang, Sai
    Lin, Chunsheng
    Xu, Wenjun
    Gao, Yue
    Feng, Zhiyong
    Zhu, Fusheng
    IEEE INTERNET OF THINGS JOURNAL, 2021, 8 (03) : 2051 - 2065
  • [5] Internet of Things: Classification of attacks using CTM method
    Hind, Meziane
    Noura, Ouerdi
    Amine, Kasmi Mohammed
    Sanae, Mazouz
    3RD INTERNATIONAL CONFERENCE ON NETWORKING, INFORMATION SYSTEM & SECURITY (NISS'20), 2020,
  • [6] A Lightweight Transformer Network for Hyperspectral Image Classification
    Zhang, Xuming
    Su, Yuanchao
    Gao, Lianru
    Bruzzone, Lorenzo
    Gu, Xingfa
    Tian, Qingjiu
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2023, 61
  • [7] Transformer Active Part Fault Assessment Using Internet of Things
    Mussin, Nauryzbay
    Suleimen, Aidar
    Akhmenov, Temirlan
    Amanzholov, Nurzhan
    Nurmanova, Venera
    Bagheri, Mehdi
    Naderi, Mohammad S.
    Abedinia, Oveis
    2018 2ND INTERNATIONAL CONFERENCE ON COMPUTING AND NETWORK COMMUNICATIONS (COCONET), 2018, : 179 - 184
  • [8] TinyNet: A Lightweight, Modular, and Unified Network Architecture for The Internet of Things
    Chen, Gonglong
    Wang, Yihui
    Li, Huikang
    Dong, Wei
    PROCEEDINGS OF THE 2019 ACM SIGCOMM CONFERENCE POSTERS AND DEMOS (SIGCOMM '19), 2019, : 9 - 11
  • [9] Signal Modulation Classification Based on the Transformer Network
    Cai, Jingjing
    Gan, Fengming
    Cao, Xianghai
    Liu, Wei
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2022, 8 (03) : 1348 - 1357
  • [10] Network Attack Classification with a Shallow Neural Network for Internet and Internet of Things (IoT) Traffic
    Ehmer, Jorg
    Savaria, Yvon
    Granado, Bertrand
    David, Jean-Pierre
    Denoulet, Julien
    ELECTRONICS, 2024, 13 (16)