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A Cost-Aware DNN-Based FDI Technology for Solenoid Pumps

Authors
Kim, SujuAkpudo, Ugochukwu EjikeHur, Jang-Wook
Issue Date
Oct-2021
Publisher
MDPI
Keywords
condition monitoring; fault diagnosis; feature extraction; feature selection; deep neural network
Citation
ELECTRONICS, v.10, no.19
Journal Title
ELECTRONICS
Volume
10
Number
19
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/20317
DOI
10.3390/electronics10192323
ISSN
2079-9292
Abstract
Fluid Pumps serve a critical function in hydraulic and thermodynamic systems, and this often exposes them to prolonged use, leading to fatigue, stress, contamination, filter clogging, etc. On one hand, vibration monitoring for hydraulic components has shown reliable efficiencies in fault detection and isolation (FDI) practices. On the other hand, signal processing techniques provide reliable FDI parameters for artificial intelligence (AI)-based data-driven diagnostics (and prognostics) and have recently attracted global interest across different disciplines and applications. Particularly for cost-aware systems, the choice of diagnostic parameters determines the reliability of an FDI/diagnostic model. By extracting (and selecting) discriminative spectral and transient features from solenoid pump vibration signals, accurate diagnostics across operating conditions can be achieved using AI-based FDI algorithms. This study employs a deep neural network (DNN) for fault diagnosis after a correlation-based selection of discriminative spectral and transient features. To solve the problem of hyperparameter selection for the proposed model, a grid search technique was employed for optimal search for parameters (number of layers, neurons, activation function, weight optimizer, etc.) on different network architectures.The results reveal the high accuracy of a three-layer DNN with ReLU activation function, with a test accuracy of 99.23% and a minimal false alarm rate on a case study.
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