Energy-efficient classification strategy for detecting interference and malicious sensor nodes in wireless body area Networks

Mohd Kaleem, Ganesh Gopal Devarajan
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引用次数: 0

Abstract

Wireless Body Area Networks (WBANs) play a vital role in healthcare monitoring, using wireless sensors to track physiological parameters and predict illness onset. This study proposes a novel approach for detecting interference and malicious sensor nodes in WBANs, crucial for maintaining system integrity and performance. The method combines feature-based techniques with classification strategies to accurately identify anomalies. Features are taken from WBAN nodes and used to train Support Vector Machine (SVM) classifiers, which makes interference detection work well. A neurofuzzy inference system (ANFIS) classifier is also used to train the system on trusted and untrusted nodes at the start, which makes classification easier in real-world WBAN situations. Link failures due to rogue sensor nodes can severely impact WBAN performance, emphasizing the need for efficient detection and correction mechanisms. The proposed strategy introduces a weight metric to identify broken links, enhancing system reliability. Evaluation metrics, including LFD latency and packet delivery ratio, are analyzed to assess the efficacy of the approach. By improving interference detection and addressing link failures, this study contributes to enhancing the efficiency and reliability of WBAN networks, critical for advancing healthcare monitoring technologies.

在无线体域网络中检测干扰和恶意传感器节点的高能效分类策略
无线体域网(WBAN)在医疗监控中发挥着重要作用,它利用无线传感器跟踪生理参数并预测疾病的发生。本研究提出了一种在 WBAN 中检测干扰和恶意传感器节点的新方法,这对维护系统的完整性和性能至关重要。该方法将基于特征的技术与分类策略相结合,以准确识别异常情况。从 WBAN 节点中提取特征,用于训练支持向量机 (SVM) 分类器,从而使干扰检测工作顺利进行。神经模糊推理系统(ANFIS)分类器也用于在开始时对可信和不可信节点进行系统训练,从而使实际 WBAN 情况下的分类更容易。流氓传感器节点导致的链路故障会严重影响 WBAN 性能,因此需要高效的检测和纠正机制。所提出的策略引入了权重指标来识别断开的链接,从而提高了系统可靠性。分析了包括 LFD 延迟和数据包传送率在内的评估指标,以评估该方法的有效性。通过改进干扰检测和解决链路故障,本研究有助于提高 WBAN 网络的效率和可靠性,这对医疗监控技术的发展至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.20
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