4.6 Article

A Fault Diagnosis Framework for Centrifugal Pumps by Scalogram-Based Imaging and Deep Learning

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 58052-58066

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3072854

Keywords

Pumps; Continuous wavelet transforms; Vibrations; Feature extraction; Fault diagnosis; Time-frequency analysis; Wavelet transforms; Centrifugal pump; continuous wavelet transformations; scalogram; gray images; convolutional neural network

Funding

  1. Technology Development Program - Ministry of SMEs and Startups (MSS), South Korea [S2860371]
  2. Korea Technology & Information Promotion Agency for SMEs (TIPA) [S2860371] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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In this study, a novel automated health state diagnosis framework for centrifugal pump is proposed, combining a signal to time-frequency imaging technique and an Adaptive Deep Convolution Neural Network model (ADCNN). The framework employs Continuous Wavelet Transform to extract fault information from vibration signals, which are then converted into grayscale images for input to the ADCNN model. The performance of this diagnostic framework was validated with experimental results showing an average improvement of 4.7 - 15.6% over existing methods.
Centrifugal pumps are the most vital part of any process industry. A fault in centrifugal pump can affect imperative industrial processes. To ensure reliable operation of the centrifugal pump, this paper proposes a novel automated health state diagnosis framework for centrifugal pump that combines a signal to time-frequency imaging technique and an Adaptive Deep Convolution Neural Network model (ADCNN). First, the vibration signals corresponding to different health conditions of the centrifugal pump are acquired. Vibration signals obtained from the centrifugal pump carry a great deal of information and generally, statistical features are extracted from the vibration signals to retain meaningful fault information. However, these features are either insensitive to weak incipient faults or unsuitable for tracking severe faults, thus, decreasing the fault classification accuracy. To tackle this problem, a signal to time-frequency imaging technique is applied to the pump vibration signals. For this purpose, Continuous Wavelet Transform (CWT) is applied to decompose the vibration signals over different time-frequency scales and extract the pump fault information in both the time and frequency domains. The CWT scales form two-dimensional time-frequency images commonly referred to as scalograms. The CWT scalograms are then converted into grayscale images (SGI). Over the past few decades, CNN models have been established as an effective practice to process images for classification and pattern recognition. Consequently, the extracted CWTSGIs are finally provided as inputs to the proposed ADCNN architecture to achieve feature extraction and classification for centrifugal pump faults. The performance of the proposed diagnostic framework (CWTSGI + ADCNN) is validated with a vibration dataset collected from a testbed specifically designed for centrifugal pump diagnosis. The experimental results suggest that the proposed technique based on CWTSGI and ADCNN outperformed existing methods with an average performance improvement of 4.7 - 15.6%.

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