Early fault detection (EFD) of rotating machines is important to decrease the maintenance cost and improve the mechanical system stability. One of the key points of EFD is developing a generic model to extract robust and discriminative features from different equipment for early fault detection. Most existing EFD methods focus on learning fault representation by one type of feature. However, a combination of multiple features can capture a more comprehensive representation of system state. In this paper, we propose an EFD method based on multiple feature fusion with stacking architecture (M2FSA). The proposed method can extract generic and discriminiative features to detect early faults by combining time domain (TD), frequency domain (FD), and time-frequency domain (TFD) features. In order to unify the dimensions of the different domain features, Stacked Denoising Autoencoder (SDAE) is utilized to learn deep features in three domains. The architecture of the proposed M2FSA consists of two layers. The first layer contains three base models, whose corresponding inputs are different deep features. The outputs of the first layer are concatenated to generate the input to the second layer, which consists of a meta model. The proposed method is tested on three bearing datasets. The results demonstrate that the proposed method is better than existing methods both in sensibility and reliability.
翻译:对旋转机器进行早期故障探测(EFD)对于降低维护成本和提高机械系统稳定性十分重要。EFD的要点之一是开发一种通用模型,从不同的设备中提取稳健和有区别的特征,以便及早发现故障。现有的EFD方法大多侧重于用一种特征来学习过失的表示方式。然而,多种特征的结合可以捕捉更全面的系统状态。在本文中,我们建议一种基于多重特征与堆叠结构(M2FSA)融合的EFD方法。拟议的方法可以提取通用和共感特征,以便通过将时间域(TD)、频率域(FD)和时频域(TFD)特征结合起来,来探测早期缺陷。为了统一不同域特征的维度,Sacked Denoising Autencoder(SDE)被利用来学习三个领域的深度特征。拟议的M2FSA结构由两层组成。第一个层包含三种基本模型,其相应的投入是不同的深度。第一个层的输出结果是生成到第二层的输入过程,后者是元模型中的拟议结果。