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An intrusion detection model using improved convolutional deep belief networks for wireless sensor networks

机译:一种利用改进的无线传感器网络改进卷积的深度信仰网络的入侵检测模型

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摘要

Intrusion detection is a critical issue in the wireless sensor networks (WSNs), specifically for security applications. In literature, many classification algorithms have been applied to address the intrusion detection problems. However, their efficiency and scalability still need to be improved. This paper proposes an improved convolutional deep belief network-based intrusion detection model (ICDBN_IDM), which consists of a redundancy detection algorithm based on the convolutional deep belief network and a performance evaluation strategy. The redundancy detection can remove non-effective nodes and data, and save the energy consumption of the whole network. The improved algorithm extracts features from normal and abnormal behaviour samples by using unsupervised learning and overcomes the problem of unknown or less prior samples. Compared with the commonly used machine learning mechanisms, the proposed ICDBN_IDM achieves high intrusion detection accuracy, reduces the ratio of the false alarm while saving the energy consumption of sensor nodes.
机译:入侵检测是无线传感器网络(WSNS)中的关键问题,专门用于安全应用。在文献中,已经应用了许多分类算法来解决入侵检测问题。但是,它们的效率和可扩展性仍然需要得到改善。本文提出了一种改进的卷积深信念网络入侵检测模型(ICDBN_IDM),其包括基于卷积深度信仰网络和绩效评估策略的冗余检测算法。冗余检测可以删除非有效节点和数据,并节省整个网络的能量消耗。改进的算法通过使用无监督的学习提取来自正常和异常行为样本的特征,并克服了未知或更少的先验样本的问题。与常用的机器学习机制相比,所提出的ICDBN_IDM实现了高侵入检测精度,降低了误报的比例,同时节省了传感器节点的能量消耗。

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