A Hybrid Machine Learning Approach for Intrusion Detection and Mitigation on IoT Smart Healthcare

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Abstract

Strong cybersecurity solutions are becoming more and more important as Internet of Things (IoT) technology integration in healthcare settings develops. This study offers a method for feature extraction, selection, and attack classification by fusing the discriminative capacity of feedforward neural networks (FNNs) with the adaptability of fuzzy logic systems. In delicate healthcare database of IoT wearable devices, to reduce false alarm and guaranteeing intrusion detection dependability are the main priorities. The suggested method uses a feature extraction, selection technique, training and testing based on FNN, which allows the model to adjust to the dynamic and varied character of medical data. During the assessment stage, a dataset including a range of healthcare IoT scenarios, including different kinds of attacks, is used to train and evaluate the model, the ToN_IoT dataset was used. Fuzzy logic improves the system's resilience in identifying pertinent features by managing uncertainties and imprecise input. Fuzzy logic is one of the best technique for handling uncertainty, its linguistic representation and rule reasoning helps in better identification and classification. The findings indicate a noteworthy decrease in the frequency of false alarms when juxtaposed with conventional intrusion detection systems. Results obtained from the model are 99.2, 98.8, 99.5, 99.1 & 0.008 for accuracy, precision, recall, F1-Score and False alarm respectively. Promising outcomes in protecting IoT healthcare environments are demonstrated by the suggested system, opening the door to better patient data privacy and system resilience against cyberattacks.
物联网智能医疗入侵检测与缓解的混合机器学习方法
随着物联网(IoT)技术在医疗保健领域的应用,强大的网络安全解决方案正变得越来越重要。本研究通过融合前馈神经网络(FNN)的判别能力和模糊逻辑系统的适应性,提供了一种特征提取、选择和攻击分类的方法。在精细的物联网可穿戴设备医疗数据库中,减少误报和保证入侵检测的可靠性是首要任务。建议的方法采用基于 FNN 的特征提取、选择技术、训练和测试,使模型能够适应医疗数据的动态和多变性。在评估阶段,使用了一个包含一系列医疗物联网场景(包括不同类型的攻击)的数据集来训练和评估模型,使用的是 ToN_IoT 数据集。模糊逻辑通过管理不确定性和不精确的输入,提高了系统在识别相关特征方面的弹性。模糊逻辑是处理不确定性的最佳技术之一,其语言表示和规则推理有助于更好地识别和分类。研究结果表明,与传统入侵检测系统相比,误报频率显著降低。该模型的准确度、精确度、召回率、F1-分数和误报率分别为 99.2、98.8、99.5、99.1 和 0.008。建议的系统在保护物联网医疗环境方面取得了可喜的成果,为更好地保护患者数据隐私和提高系统抵御网络攻击的能力打开了大门。
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