4.6 Article

Deep-Learning-Based Physical Layer Authentication for Industrial Wireless Sensor Networks

期刊

SENSORS
卷 19, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/s19112440

关键词

PHY-layer; light-weight authentication; neural network; WSN; industrial

资金

  1. NSFC [61572114]
  2. National Major R D Program [2018YFB0904900, 2018YFB0904905]
  3. Sichuan Sci & Tech Basic Research Condition Platform Project [2018TJPT0041]
  4. Sichuan Sci & Tech Service Development Project [18KJFWSF0368]
  5. Hunan Provincial Nature Science Foundation [2018JJ2535]
  6. Chile CONICYT FONDECYT Regular Project [1181809]

向作者/读者索取更多资源

In this paper, a deep learning (DL)-based physical (PHY) layer authentication framework is proposed to enhance the security of industrial wireless sensor networks (IWSNs). Three algorithms, the deep neural network (DNN)-based sensor nodes' authentication method, the convolutional neural network (CNN)-based sensor nodes' authentication method, and the convolution preprocessing neural network (CPNN)-based sensor nodes' authentication method, have been adopted to implement the PHY-layer authentication in IWSNs. Among them, the improved CPNN-based algorithm requires few computing resources and has extremely low latency, which enable a lightweight multi-node PHY-layer authentication. The adaptive moment estimation (Adam) accelerated gradient algorithm and minibatch skill are used to accelerate the training of the neural networks. Simulations are performed to evaluate the performance of each algorithm and a brief analysis of the application scenarios for each algorithm is discussed. Moreover, the experiments have been performed with universal software radio peripherals (USRPs) to evaluate the authentication performance of the proposed algorithms. Due to the trainings being performed on the edge sides, the proposed method can implement a lightweight authentication for the sensor nodes under the edge computing (EC) system in IWSNs.

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