Kumar S Vishnu, Mary G Aloy Anuja, Mahdal Miroslav
Department of Electronics and Communication Engineering, Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology, Avadi 600062, India.
Department of Control Systems and Instrumentation, Faculty of Mechanical Engineering, VSB-Technical University of Ostrava, 17. Listopadu 2172/15, 70800 Ostrava, Czech Republic.
Sensors (Basel). 2023 Jul 10;23(14):6266. doi: 10.3390/s23146266.
The Internet of Things (IoT) is seen as the most viable solution for real-time monitoring applications. But the faults occurring at the perception layer are prone to misleading the data driven system and consume higher bandwidth and power. Thus, the goal of this effort is to provide an edge deployable sensor-fault detection and identification algorithm to reduce the detection, identification, and repair time, save network bandwidth and decrease the computational stress over the Cloud. Towards this, an integrated algorithm is formulated to detect fault at source and to identify the root cause element(s), based on Random Forest (RF) and Fault Tree Analysis (FTA). The RF classifier is employed to detect the fault, while the FTA is utilized to identify the source. A Methane (CH4) sensing application is used as a case-study to test the proposed system in practice. We used data from a healthy CH4 sensing node, which was injected with different forms of faults, such as sensor module faults, processor module faults and communication module faults, to assess the proposed model's performance. The proposed integrated algorithm provides better algorithm-complexity, execution time and accuracy when compared to FTA or standalone classifiers such as RF, Support Vector Machine (SVM) or K-nearest Neighbor (KNN). Metrics such as Accuracy, True Positive Rate (TPR), Matthews Correlation Coefficient (MCC), False Negative Rate (FNR), Precision and F1-score are used to rank the proposed methodology. From the field experiment, RF produced 97.27% accuracy and outperformed both SVM and KNN. Also, the suggested integrated methodology's experimental findings demonstrated a 27.73% reduced execution time with correct fault-source and less computational resource, compared to traditional FTA-detection methodology.
物联网(IoT)被视为实时监测应用中最可行的解决方案。但感知层出现的故障容易误导数据驱动系统,并消耗更高的带宽和功率。因此,这项工作的目标是提供一种可在边缘部署的传感器故障检测与识别算法,以减少检测、识别和修复时间,节省网络带宽并减轻云端的计算压力。为此,基于随机森林(RF)和故障树分析(FTA)制定了一种集成算法,用于在源头检测故障并识别根本原因要素。采用RF分类器检测故障,同时利用FTA识别故障源。以甲烷(CH4)传感应用为例,在实际中测试所提出的系统。我们使用来自健康CH4传感节点的数据,向其中注入不同形式的故障,如传感器模块故障、处理器模块故障和通信模块故障,以评估所提出模型的性能。与FTA或诸如RF、支持向量机(SVM)或K近邻(KNN)等独立分类器相比,所提出的集成算法具有更好的算法复杂度、执行时间和准确性。使用诸如准确率、真阳性率(TPR)、马修斯相关系数(MCC)、假阴性率(FNR)、精确率和F1分数等指标对所提出的方法进行排名。在现场实验中,RF的准确率为97.27%,优于SVM和KNN。此外,与传统的FTA检测方法相比,所建议的集成方法的实验结果表明,执行时间减少了27.73%,故障源识别正确,且计算资源消耗更少。