Abhay Nambiar , Naveen Venkatesh S. , Aravinth S. , Sugumaran V. , Sangharatna M. Ramteke , Max Marian
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To identify the most relevant features, the J48 decision tree algorithm is employed. Five lazy classifiers viz. k-nearest neighbor (kNN), K-star, local kNN, locally weighted learning (LWL), and random subspace ensemble K-nearest neighbors (RseslibKnn) are then used for fault classification, each applied to the individual feature sets. The classifiers achieve commendable accuracy, ranging from 85.33% (K-star and local kNN) to 96.00% (RseslibKnn) for individual features. However, the true innovation lies in feature fusion. Combining the three feature types, statistical, histogram, and ARMA, significantly improves accuracy. 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引用次数: 0
摘要
空气压缩机对许多行业都至关重要,但故障的早期检测对保持压缩机平稳运行和最大限度降低维护成本至关重要。本文研究了如何使用预测性机器学习模型和特征融合来诊断单作用单级往复式空气压缩机的故障。本研究的输入数据是在健康和不同故障条件(进气阀跳动、出气阀跳动、进气-出气阀跳动和止回阀故障)下采集的振动信号。研究人员从振动信号中提取了各种特征,包括统计属性、直方图数据和自动回归移动平均(ARMA)系数。为了识别最相关的特征,采用了 J48 决策树算法。然后使用五个懒惰分类器,即 K 近邻(kNN)、K-star、局部 KNN、局部加权学习(LWL)和随机子空间集合 K 近邻(RseslibKnn)进行故障分类,每个分类器都应用于单个特征集。对于单个特征,分类器达到了值得称赞的准确率,从 85.33%(K-star 和局部 kNN)到 96.00%(RseslibKnn)不等。然而,真正的创新在于特征融合。将统计、直方图和 ARMA 三种特征结合起来,可以显著提高准确率。当本地 kNN 与融合特征一起使用时,模型的分类准确率达到了惊人的 100%,证明了这种方法在空气压缩机可靠故障诊断方面的有效性。
Prediction of air compressor faults with feature fusion and machine learning
Air compressors are critical for many industries, but early detection of faults is crucial for keeping them running smoothly and minimizing maintenance costs. This contribution investigates the use of predictive machine learning models and feature fusion to diagnose faults in single-acting, single-stage reciprocating air compressors. Vibration signals acquired under healthy and different faulty conditions (inlet valve fluttering, outlet valve fluttering, inlet-outlet valve fluttering, and check valve fault) serve as the study’s input data. Diverse features including statistical attributes, histogram data, and auto-regressive moving average (ARMA) coefficients are extracted from the vibration signals. To identify the most relevant features, the J48 decision tree algorithm is employed. Five lazy classifiers viz. k-nearest neighbor (kNN), K-star, local kNN, locally weighted learning (LWL), and random subspace ensemble K-nearest neighbors (RseslibKnn) are then used for fault classification, each applied to the individual feature sets. The classifiers achieve commendable accuracy, ranging from 85.33% (K-star and local kNN) to 96.00% (RseslibKnn) for individual features. However, the true innovation lies in feature fusion. Combining the three feature types, statistical, histogram, and ARMA, significantly improves accuracy. When local kNN is used with fused features, the model achieves a remarkable 100% classification accuracy, demonstrating the effectiveness of this approach for reliable fault diagnosis in air compressors.
期刊介绍:
Knowledge-Based Systems, an international and interdisciplinary journal in artificial intelligence, publishes original, innovative, and creative research results in the field. It focuses on knowledge-based and other artificial intelligence techniques-based systems. The journal aims to support human prediction and decision-making through data science and computation techniques, provide a balanced coverage of theory and practical study, and encourage the development and implementation of knowledge-based intelligence models, methods, systems, and software tools. Applications in business, government, education, engineering, and healthcare are emphasized.