基于随机下采样和额外树算法的无线传感器网络数据故障检测

Luh Kesuma Wardhani, Rifqi Adjie Febriyanto, Nenny Anggraini
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引用次数: 1

摘要

作为一个高度多样化的网络物理系统,无线传感器网络(WSN)容易受到各种故障的影响,这些故障会对系统的安全性、经济性和可靠性造成灾难性的后果。由于传感器资源的各种部署和限制,对无线传感器网络中的故障或故障进行正确的检测和诊断是一个复杂的问题。在本研究中,使用了一种基于监督的机器学习方法。为了解决这一问题,作者采用随机下采样(RUS)采样方法来克服类不平衡,并采用额外树(ET)分类算法通过数据检查传感器行为以发现和诊断问题。将该方案的性能与支持向量机(SVM)和随机森林(RF)等先进的机器学习算法进行比较。以准确率、查全率、查准率、F1-Score和AUC-ROC评分为衡量指标,比较了建议方案的效率。本研究结果表明,随机欠采样(RUS)采样方法可以对用于预测WSN数据故障的机器学习模型的性能产生消极和积极的影响。例如所使用的分类算法之一支持向量机(SVM)的性能结果,根据所使用的模型参数,所得到的模型对精度度量参数的性能的值范围在0.29到0.83之间。通过比较,Extra- Tree算法在使用的所有模型参数下,在精度度量参数上的模型性能最好,达到96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Detection in Wireless Sensor Networks Data Using Random Under Sampling and Extra-Tree Algorithm
As a highly diverse cyber-physical system, Wireless Sensor Network (WSN) is vulnerable to various failures, which can have catastrophic consequences for safety, economy, and system dependability. Due to the various deployments and limitations of sensor resources, proper detection and diagnosis of failures or faults in WSNs is a complex problem. In this study, a supervised machine learning-based approach is used. To address this issue, the authors employ Random Under Sampling (RUS) sampling method, which is used to overcome class imbalance, and Extra-Tree (ET) classification algorithm to examine sensor behavior through data to find and diagnose problems. The performance of the proposed scheme is compared with advanced machine learning algorithms such as Support Vector Machine (SVM) and Random Forest (RF). The efficiency of the suggested scheme is compared based on the measuring parameters of Accuracy, Recall, Precision, F1-Score, and AUC-ROC Score. This study's results showed that the Random Under Sampling (RUS) sampling method could negatively and positively impact the performance of machine learning models generated to predict WSN data faults. Such as the performance results of one of the classification algorithms used, Support Vector Machine (SVM), the performance of the resulting model on the Accuracy measurement parameter has a value range between 0.29 to 0.83, depending on the model parameters used. In comparison, the Extra- Tree algorithm generates the best model performance on the Accuracy measurement parameter of 96% on all models with the model parameters used.
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