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An effective feature engineering for DNN using hybrid PCA-GWO for intrusion detection in IoMT architecture

机译:使用混合PCA-GWO进行IOMT架构入侵检测的DNN有效特征工程

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摘要

The entire computing paradigm is changed due to the technological advancements in Information and Communication Technology (ICT). Due to these advancements, various new communication channels are being introduced, out of which the Internet of Things (IoT) plays a significant role. The Internet of Medical Things (IoMT) is a special category of IoT in which the medical devices communicate with each other for sharing sensitive data. These advancements help the healthcare industry to have better contact and care towards their patients. But they too have certain drawbacks since there are so many security and privacy issues like replay, man-in-the-middle, impersonation, privileged-insider, remote hijacking, password guessing, denial of service (DoS) attacks and malware attacks. When the sensitive data is being attacked by any of these attacks, there is a chance of losing the authorized data to the attacker or getting altered due to which the data is not available for the authorized users and customers. Machine learning algorithms are widely used in the Intrusion Detection System (IDS) for detecting and classifying the attacks at the network and host level in a dynamic manner. Many supervised and unsupervised algorithms have been designed by researchers from the area of machine learning and data mining to identify the reliable detection of an anomaly. However, the main challenge in the IDS models are changed in dynamic and random behavior of malicious attacks and designing a scalable solution that can handle this behavior. The rapid change in network behavior and the fast evolution of various attacks paved the way for evaluating various datasets that are generated over the years and to design different dynamic approaches. In this paper, a deep neural network (DNN) is used to develop effective and efficient IDS in the IoMT environment to classify and predict unforeseen cyberattacks. The network parameter are preprocessed, optimized and tuned by hyperparameter selection methods. A comprehensive analysis of experiments in DNN with other machine learning algorithms are compared on the benchmark intrusion detection dataset. Through rigorous testing, it has proved that the proposed DNN model performs better than the existing machine learning approaches with an increase in accuracy by 15% and decreases in time complexity by 32%, which helps in faster alerts to avoid post effects of intrusion in sensitive cloud data storage.
机译:由于信息和通信技术(ICT)的技术进步,整个计算范例被改变。由于这些进步,正在介绍各种新的通信渠道,其中互联网(物联网)起着重要作用。医疗器互联网(IOMT)是一种特殊的IOT类别,其中医疗设备彼此通信以共享敏感数据。这些进步有助于医疗保健行业更好地接触和照顾患者。但是,他们也有一定的缺点,因为存在如此多的安全和隐私问题,如重播,中间人,冒充,特权 - 内幕,远程劫持,密码猜测,拒绝服务(DOS)攻击和恶意软件攻击。当敏感数据被任何这些攻击攻击时,有机会将授权数据丢失到攻击者或被改变,因为该数据不适用于授权用户和客户。机器学习算法广泛用于入侵检测系统(IDS),用于以动态方式检测和分类网络和主机级的攻击。许多监督和无监督的算法是由机器学习领域的研究人员设计的,以识别异常的可靠检测。但是,IDS模型中的主要挑战在恶意攻击的动态和随机行为中更改,并设计了可以处理此行为的可扩展解决方案。网络行为的快速变化和各种攻击的快速演变为评估多年来产生的各种数据集并设计不同的动态方法的方式铺平了道路。在本文中,深度神经网络(DNN)用于在IOMT环境中开发有效和有效的ID,以对不可预见的网络图案进行分类和预测。通过超参数选择方法预处理,优化和调整网络参数。在基准入侵检测数据集中比较了与其他机器学习算法的DNN实验综合分析。通过严格的测试,证明了所提出的DNN模型比现有的机器学习方法更好地表现为准确性提高15%,随时间复杂程度降低32%,这有助于更快地提醒侵扰敏感的效果云数据存储。

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