Industrial Fault Detection Employing Meta Ensemble Model Based on Contact Sensor Ultrasonic Signal

Amirhossein Moshrefi, H. H. Tawfik, M. Elsayed, F. Nabki
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Abstract

Ultrasonic diagnostics is the earliest way to predict industrial faults. Usually, a contact microphone is employed for detection, but the recording will be contaminated with noise. In this paper, a dataset that contains 10 main faults of pipelines and motors is analyzed from which 30 different features in the time and frequency domains are extracted. Afterward, for dimensionality reduction, principal component analysis (PCA), linear discriminant analysis (LDA), and t-distributed stochastic neighbor embedding (t-SNE) are performed. In the subsequent phase, recursive feature elimination (RFE) is employed as a strategic method to analyze and select the most relevant features for the classifiers. Next, predictive models consisting of k-Nearest Neighbor (KNN), Logistic Regression (LR), Decision Tree (DT), Gaussian Naive Bayes (GNB), and Support Vector Machine (SVM) are employed. Then, in order to solve the classification problem, a stacking classifier based on a meta-classifier which combines multiple classification models is introduced. Furthermore, the k-fold cross-validation technique is employed to assess the effectiveness of the model in handling new data for the evaluation of experimental results in ultrasonic fault detection. With the proposed method, the accuracy is around 5% higher over five cross folds with the least amount of variation. The timing evaluation of the meta model on the 64 MHz Cortex M4 microcontroller unit (MCU) revealed an execution time of 11 ms, indicating it could be a promising solution for real-time monitoring.
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基于接触传感器超声波信号的元集合模型的工业故障检测
超声波诊断是预测工业故障的最早方法。通常使用接触式麦克风进行检测,但记录会受到噪声的污染。本文分析了包含管道和电机 10 种主要故障的数据集,从中提取了 30 种不同的时域和频域特征。之后,为了降低维度,进行了主成分分析(PCA)、线性判别分析(LDA)和 t 分布随机邻域嵌入(t-SNE)。在随后的阶段,采用递归特征消除法(RFE)作为一种策略方法,为分类器分析和选择最相关的特征。接下来,预测模型包括 k-Nearest Neighbor (KNN)、Logistic Regression (LR)、Decision Tree (DT)、Gaussian Naive Bayes (GNB) 和 Support Vector Machine (SVM)。然后,为了解决分类问题,引入了基于元分类器的堆叠分类器,该分类器结合了多个分类模型。此外,在超声波故障检测的实验结果评估中,采用了 k 折交叉验证技术来评估模型处理新数据的有效性。采用所提出的方法,在五次交叉验证中,准确率提高了约 5%,且变化量最小。在 64 MHz Cortex M4 微控制器单元(MCU)上对元模型进行的时序评估显示,执行时间为 11 毫秒,这表明它是一种很有前途的实时监测解决方案。
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