基于边缘智能的IoMT框架中假数据注入攻击缓解

Sainath Reddy Sankepally, Nishoak Kosaraju, Vishwambhar Reddy, U. Venkanna
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引用次数: 1

摘要

IoMT是一个网络基础设施,包括服务、软件、硬件和医疗设备。通过消除亲自就诊的需要,这种技术也在其他方面改善了患者的体验。但也大大降低了成本,从而增加了对病人的护理。IoMT中的漏洞,如虚假数据注入等,会导致数据损坏和错误诊断,最终对患者造成严重伤害。由于数据的高维性和动态性,机器学习有可能提供有效的解决方案。因此,为了保护IoMT设备和保护数据完整性,本文提出了一种基于XGBoost机器学习模型的虚假数据注入缓解技术。该模型在对给定数据进行真假分类时,产生了92%的总体准确率。开发了一个IoMT节点,用于实时测试和验证拟议的缓解技术。与同类方法相比,该模型具有更好的性能和更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge Intelligence Based Mitigation of False Data Injection Attack In IoMT Framework
IoMT is a networked infrastructure comprising services, software, hardware, and medical equipment. By removing the need for in-person visits, this type of technology is improving patient experiences in other ways as well. But also significantly lowering the cost, resulting in an increase in patient care all around. Vulnerabilities in IoMT, such as false data injection, lead to data corruption and false diagnoses, which ultimately leads to severe damage to the patient. Due to the high dimensionality and dynamic nature of the data, machine learning has the potential to provide an effective solution. Therefore to safeguard the IoMT devices and protect the data integrity, this paper proposes a novel mitigation technique for false data injection using an XGBoost Machine Learning model. The model has produced an overall accuracy of 92% while classifying given data as genuine or false. A IoMT node was developed for real-time testing and validation of the proposed mitigation technique. The proposed model displays better performance and enhanced accuracy compared to similar methods.
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