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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >OPTIMIZATION-DRIVEN DEEP RECURRENT NEURAL NETWORK FOR INTRUSION DETECTION AND HEALTH RISK ASSESSMENT IN WIRELESS BODY SENSOR NETWORK
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OPTIMIZATION-DRIVEN DEEP RECURRENT NEURAL NETWORK FOR INTRUSION DETECTION AND HEALTH RISK ASSESSMENT IN WIRELESS BODY SENSOR NETWORK

机译:无线体传感器网络中的入侵检测和健康风险评估优化驱动的深度经常性神经网络

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摘要

Wireless body sensor network (WBSN) has gained great attention in the environmental and military applications, but security is the major issue, nowadays. In addition, the data exchanged through the wireless sensor network (WSN) is vulnerable to several malicious attacks because of the physical defense equipment needs. Hence, various intrusion detection methods are required for defending against such attacks. Accordingly, an effective method, named deep recurrent neural network (Deep RNN), is proposed in this research for detecting the intrusion in WBSN. At first, the WBSN nodes are utilized to sense the data from the health records of patient for acquiring certain parameters to make risk assessment. Then, WBSN nodes transmit the data to the target nodes using the obtained parameters. After the determination of parameters, the WBSN nodes are responsible to collect the information of the patient and transfer the obtained information to cluster heads (CHs) based on the hybrid harmony search algorithm-particle swarm optimization (HSA-PSO). HSA-PSO is utilized for identifying the optimal CH node iteratively. From the selected CHs, secure communication is done to exchange the data packets. After that, the KDD features are extracted and intrusion detection is done using the proposed Deep RNN. After the genuine users are detected, the classification is done using fractional cat-based salp swarm algorithm (FCSSA) for the risk assessment. The performance of the intrusion detection and health risk assessment in WBSN based on the proposed model is evaluated based on accuracy, sensitivity, and the specificity. The developed model achieves the maximal accuracy of 95.79%, maximal sensitivity of 95.97%, and the maximal specificity of 95.61% using Cleveland dataset.
机译:无线车身传感器网络(WBSN)在环境和军事应用中获得了很大的关注,但安全是现在的主要问题。此外,由于物理防御设备需求,通过无线传感器网络(WSN)交换的数据很容易受到几种恶意攻击。因此,需要各种入侵检测方法来防御这种攻击。因此,在该研究中提出了一种命名为深度复发性神经网络(深RNN)的有效方法,用于检测WBSN中的侵入。首先,利用WBSN节点来感测来自患者健康记录的数据,以获取某些参数以进行风险评估。然后,WBSN节点使用所获得的参数将数据发送到目标节点。在确定参数之后,WBSN节点负责收集患者的信息并基于混合和谐搜索算法 - 粒子群(HSA-PSO)将所获得的信息传送到群集头(CHS)。 HSA-PSO用于迭代地识别最佳CH节点。从所选的CHS,完成安全通信以交换数据包。之后,提取KDD特征,并使用所提出的深RNN完成入侵检测。在检测到真正的用户之后,使用分数基于CAT的SALP群算法(FCSSA)进行分类,用于风险评估。基于准确性,敏感性和特异性,评估基于所提出的模型的WBSN入侵检测和健康风险评估的性能。开发的模型实现了95.79%,最大敏感性为95.97%,最大特异性的最大特异性为95.61%,使用克利夫兰数据集。

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