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首页> 外文期刊>Journal of Intelligent Manufacturing >Imbalanced fault diagnosis of rotating machinery via multi-domain feature extraction and cost-sensitive learning
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Imbalanced fault diagnosis of rotating machinery via multi-domain feature extraction and cost-sensitive learning

机译:通过多域特征提取和成本敏感学习的旋转机械的不平衡故障诊断

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摘要

Fault diagnosis plays an essential role in rotating machinery manufacturing systems to reduce their maintenance costs. How to improve diagnosis accuracy remains an open issue. To this end, we develop a novel framework through combined use of multi-domain vibration feature extraction, feature selection and cost-sensitive learning method. First, we extract time-domain, frequency-domain, and time-frequency-domain features to make full use of vibration signals. Second, a feature selection technique is employed to obtain a feature subset with good generalization properties, by simultaneously measuring the relevance and redundancy of features. Third, a cost-sensitive learning method is designed for a classifier to effectively learn the discriminating boundaries, with an extremely imbalanced distribution of fault instances. For illustration, a real-world dataset of rotating machinery collected from an oil refinery in China is utilized. The extensive experiments have demonstrated that our multi-domain feature extraction and feature selection can significantly improve the diagnosis accuracy. Meanwhile, our cost-sensitive learning method consistently outperforms the traditional classifiers such as support vector machine (SVM), gradient boosting decision tree (GBDT), etc., and even better than the classification method calibrated by six popular imbalanced data resampling algorithms, such as the Synthetic Minority Over-sampling Technique (SMOTE) and the Adaptive Synthetic sampling method (ADASYN), in terms of decreasing missed alarms and reducing the average cost. Owing to its high evaluation scores and low average misclassification cost, cost-sensitive GBDT (CS-GBDT) is preferred for imbalanced fault diagnosis in practice.
机译:故障诊断在旋转机械制造系统中起着重要作用,以降低其维护成本。如何提高诊断准确性仍然是一个开放的问题。为此,我们通过联合使用多域振动特征提取,特征选择和成本敏感的学习方法来开发一种新颖的框架。首先,我们提取时域,频域和时频域特征来充分利用振动信号。其次,采用特征选择技术来获得具有良好泛化特性的特征子集,同时测量特征的相关性和冗余。第三,设计了成本敏感的学习方法,专为分类器而有效地学习辨别边界,具有极其不平衡的故障实例分布。出于插图,利用了从中国炼油厂收集的旋转机械的现实数据集。广泛的实验表明,我们的多域特征提取和特征选择可以显着提高诊断精度。同时,我们的成本敏感学习方法始终如一地优于传统的分类器,如支持向量机(SVM),渐变升压决策树(GBDT)等,甚至比六个流行的不平衡数据重采样算法校准的分类方法更好,甚至更好作为合成少数群体过度采样技术(SMOTE)和自适应合成采样方法(ADASYN),在减少未错过的警报和降低平均成本方面。由于其高评价评分和低平均分类成本,在实践中优先考虑成本敏感的GBDT(CS-GBDT),以便在实践中不平衡故障诊断。

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