Multi-Task Learning with Convolutional Neural Network Approach for Packet Collision Avoidance in 802.11 WLAN

Dody Ichwana Putra, Harry Bintang Pratama, Tomoki Nakashima, Y. Nagao, M. Kurosaki, H. Ochi
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Abstract

Packet collision can degrade wireless network performance. The IEEE 802.11 Wireless Local Area Network (WLAN) uses the Clear Channel Assessment (CCA) mechanism to monitor channel availability to avoid interference of the presence signal. CCA successfully detects 802.11 signals if it obtains the packet preamble information or detects the threshold ambient power on the channel to determine the channel state. This paper proposes multi-task learning (MTL) with convolutional neural network (CNN) approach to detect WLAN packet formats and modulation types without preamble part information as a supplement to enhance CCA sensitivity. The main advantages of this method over single-task training are high classification accuracy and rapid learning with a lightweight neural network model. Shared knowledge of representation layers, such as model weights or gradients, improves the efficiency of training data and reduces redundancy. WLAN signals generated by the Matlab waveform simulator are used to verify the accuracy of the proposed method, which is then implemented on a real-time SDR-based hardware testbed. Although different time offsets affect the classifications, the proposed method proves superior in classifying the packet format and modulation of WLAN signals with an accuracy of 98.93% and 88.53% at SNR = 24 dB, respectively. The proposed method improves channel utilization and throughput of the WLAN network, as demonstrated by an NS-3 simulation.
基于卷积神经网络的802.11无线局域网分组避免多任务学习
报文冲突会降低无线网络的性能。IEEE 802.11无线局域网(WLAN)采用CCA (Clear Channel Assessment)机制来监控信道的可用性,避免存在信号的干扰。CCA通过获取报文前导信息或检测通道上的阈值环境功率来确定通道状态,从而成功检测802.11信号。本文提出了基于卷积神经网络(CNN)的多任务学习(MTL)方法来检测WLAN数据包格式和调制类型,以提高CCA的灵敏度,而不需要前置部分信息。与单任务训练相比,该方法的主要优点是分类精度高,学习速度快。表示层的共享知识,如模型权重或梯度,提高了训练数据的效率并减少了冗余。利用Matlab波形模拟器产生的WLAN信号来验证所提出方法的准确性,然后在基于实时sdr的硬件测试平台上实现。尽管不同的时间偏移会影响分类,但在信噪比为24 dB时,该方法对WLAN信号的分组格式和调制方式的分类准确率分别达到98.93%和88.53%。NS-3仿真结果表明,该方法提高了无线局域网的信道利用率和吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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