无线网络中的信道访问攻击分类:一种深度学习方法

Xianglin Wei, Li Li, Chaogang Tang, M. Doroslovački, S. Subramaniam
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引用次数: 3

摘要

应对各种信道访问攻击(CAAs)一直是实现无线网络作为智能应用的基本构建块的全部潜力的主要障碍。由于无线媒体固有的共享性质和随机性,及时识别和分类不同类型的caa是一项巨大的挑战。针对现有方法存在的时延长、数据采集开销大、适用范围有限等问题,本文提出了一种基于深度学习的CAA检测框架。首先,通过使用事件驱动网络模拟器分析CAA对无线网络性能的影响,我们展示了CAA分类的挑战。其次,建立了节点信道访问过程的状态转换模型,该模型的输出序列表征了节点在不同CAA场景下传输状态的变化规律。第三,提出了一种基于深度学习的CAA分类框架,该框架以节点的状态转移序列作为预测CAA类型的输入和输出。在我们的CAA分类框架下,对全连接、卷积和长短期记忆(LSTM)三种深度神经网络在5种CAA场景和无CAA的正常场景下对CAA进行分类的性能进行了评估。实验结果表明,LSTM优于其他两种神经网络结构,其CAA分类准确率高于95%。我们成功地将学习到的LSTM模型转移到同一网络中的其他节点和其他网络中的节点上进行CAAs分类,验证了我们提出的框架的通用性。
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Classification of Channel Access Attacks in Wireless Networks: A Deep Learning Approach
Coping with diverse channel access attacks (CAAs) has been a major obstacle to realize the full potential of wireless networks as a basic building block of smart applications. Identifying and classifying different types of CAAs in a timely manner is a great challenge because of the inherently shared nature and randomness of the wireless medium. To overcome the difficulties encountered in existing methods, such as long latency, high data collection overhead, and limited applicable range, a deep learning-based CAA detection framework is proposed in this paper. First, we show the challenges of CAA classification by analyzing the impacts of CAAs on wireless network performance using an event-driven network simulator. Second, a state-transition model is built for the channel access process at a node, whose output sequences characterize the changing patterns of the node’s transmission status in different CAA scenarios. Third, a deep learning-based CAA classification framework is presented, which takes state transition sequences of a node as input and outputs predicted CAA types. The performance of three deep neural networks, i.e., fully-connected, convolutional, and Long Short-Term Memory (LSTM) network, for classifying CAAs are evaluated under our CAA classification framework in five CAA scenarios and the normal scenario without CAA. Experimental results show that LSTM outperforms the other two neural network architectures, and its CAA classification accuracy is higher than 95%. We successfully transferred the learned LSTM model to classify CAAs on other nodes in the same network and the nodes in other networks, which verifies the generality of our proposed framework.
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