Department of Electrical, Electronics and Computer Engineering, University of Ulsan, Ulsan 44610, Korea.
Predictive Diagnosis Technology Cooperation, Ulsan 44610, Korea.
Sensors (Basel). 2021 Dec 28;22(1):179. doi: 10.3390/s22010179.
This study proposes a fault diagnosis method (FD) for multistage centrifugal pumps (MCP) using informative ratio principal component analysis (Ir-PCA). To overcome the interference and background noise in the vibration signatures (VS) of the centrifugal pump, the fault diagnosis method selects the fault-specific frequency band (FSFB) in the first step. Statistical features in time, frequency, and wavelet domains were extracted from the fault-specific frequency band. In the second step, all of the extracted features were combined into a single feature vector called a multi-domain feature pool (MDFP). The multi-domain feature pool results in a larger dimension; furthermore, not all of the features are best for representing the centrifugal pump condition and can affect the condition classification accuracy of the classifier. To obtain discriminant features with low dimensions, this paper introduces a novel informative ratio principal component analysis in the third step. The technique first assesses the feature informativeness towards the fault by calculating the informative ratio between the feature within the class scatteredness and between-class distance. To obtain a discriminant set of features with reduced dimensions, principal component analysis was applied to the features with a high informative ratio. The combination of informative ratio-based feature assessment and principal component analysis forms the novel informative ratio principal component analysis. The new set of discriminant features obtained from the novel technique are then provided to the K-nearest neighbor (K-NN) condition classifier for multistage centrifugal pump condition classification. The proposed method outperformed existing state-of-the-art methods in terms of fault classification accuracy.
本研究提出了一种使用信息比主成分分析(Ir-PCA)的多级离心泵(MCP)故障诊断方法(FD)。为了克服离心泵振动特征(VS)中的干扰和背景噪声,故障诊断方法在第一步中选择故障特定频带(FSFB)。从故障特定频带中提取了时间、频率和小波域的统计特征。在第二步中,所有提取的特征都组合成一个称为多域特征池(MDFP)的单个特征向量。多域特征池导致维度更大;此外,并非所有特征都最适合表示离心泵的状况,并且可能会影响分类器的状况分类精度。为了获得具有低维度的判别特征,本文在第三步中引入了一种新颖的信息比主成分分析。该技术首先通过计算特征内类分散性和类间距离之间的信息比来评估特征对故障的信息量。为了获得具有降维的判别特征集,将主成分分析应用于具有高信息量的特征。基于信息比的特征评估和主成分分析的组合构成了新颖的信息比主成分分析。从新技术获得的新判别特征集随后提供给 K-最近邻(K-NN)条件分类器,用于多级离心泵的条件分类。与现有的最先进方法相比,该方法在故障分类准确性方面表现出色。