Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers

This work presents a failure diagnosis tool for a water pump using a low-cost MEMS accelerometer. It was inserted three types of failures: rotor blade (new and damaged), pump soleplate tightness (stiff or loose), and cavitation, in this case on three conditions: none, incipient and severe, totaling...

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Main Authors: Luciane Agnoletti dos Santos Pedotti, Ricardo Mazza Zago, Jefferson Cutrim Rocha, José Gilberto Dalfré Filho, Mateus Giesbrecht, Fabiano Fruett
Format: Article
Language:English
Published: Universidade Estadual de Londrina 2020-12-01
Series:Semina: Ciências Exatas e Tecnológicas
Subjects:
Online Access:http://www.uel.br/revistas/uel/index.php/semexatas/article/view/41564
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spelling doaj-ac86aa1201f9498685db84527d9c5c152021-07-01T15:46:45ZengUniversidade Estadual de LondrinaSemina: Ciências Exatas e Tecnológicas1676-54511679-03752020-12-0141217118410.5433/1679-0375.2020v41n2p17120655Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiersLuciane Agnoletti dos Santos Pedotti0Ricardo Mazza Zago1Jefferson Cutrim Rocha2José Gilberto Dalfré Filho3Mateus Giesbrecht4Fabiano Fruett5Universidade Feder Tecnológica do Paraná - UTFPRUniversidade Estadual de Campinas - UNICAMPUniversidade Estadual Paulista Júlio de Mesquita Filho - UNESPUniversidade Estadual de Campinas - UNICAMPUniversidade Estadual de Campinas - UNICAMPUniversidade Estadual de Campinas - UNICAMPThis work presents a failure diagnosis tool for a water pump using a low-cost MEMS accelerometer. It was inserted three types of failures: rotor blade (new and damaged), pump soleplate tightness (stiff or loose), and cavitation, in this case on three conditions: none, incipient and severe, totaling twelve fault combinations. These conditions were tested under two different speeds to perform the diagnosis, totaling twenty-four tests. In all cases, the vibration signals from axes X, Y, and Z were acquired. Some features extracted from the vibration spectra from X-axis were used to compose the dataset. These data were analyzed employing logistic regression, a linear support vector machine (SVM), and an artificial neural network multilayer perceptron (ANN-MLP). We compared these three techniques of machine learning and evaluated which one was able to obtain the most accurate result. Using the ANN-MLP, the system was able to detect all three types of failures inserted, with about 100% of accuracy on the rotor blade condition, 92% for anchorage faults, and about 99% accuracy on cavitation state. As a conclusion, it is demonstrated that this classifier algorithm can be used to process the data from the low-cost MEMS accelerometer in predictive maintenance as an accurate tool.http://www.uel.br/revistas/uel/index.php/semexatas/article/view/41564mems accelerometer. diagnosis by vibration. diagnostic classifiers. logistic regression. linear svm. ann-mlp
collection DOAJ
language English
format Article
sources DOAJ
author Luciane Agnoletti dos Santos Pedotti
Ricardo Mazza Zago
Jefferson Cutrim Rocha
José Gilberto Dalfré Filho
Mateus Giesbrecht
Fabiano Fruett
spellingShingle Luciane Agnoletti dos Santos Pedotti
Ricardo Mazza Zago
Jefferson Cutrim Rocha
José Gilberto Dalfré Filho
Mateus Giesbrecht
Fabiano Fruett
Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers
Semina: Ciências Exatas e Tecnológicas
mems accelerometer. diagnosis by vibration. diagnostic classifiers. logistic regression. linear svm. ann-mlp
author_facet Luciane Agnoletti dos Santos Pedotti
Ricardo Mazza Zago
Jefferson Cutrim Rocha
José Gilberto Dalfré Filho
Mateus Giesbrecht
Fabiano Fruett
author_sort Luciane Agnoletti dos Santos Pedotti
title Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers
title_short Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers
title_full Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers
title_fullStr Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers
title_full_unstemmed Failure analysis on a water pump based on a low-cost MEMS accelerometer and machine learning classifiers
title_sort failure analysis on a water pump based on a low-cost mems accelerometer and machine learning classifiers
publisher Universidade Estadual de Londrina
series Semina: Ciências Exatas e Tecnológicas
issn 1676-5451
1679-0375
publishDate 2020-12-01
description This work presents a failure diagnosis tool for a water pump using a low-cost MEMS accelerometer. It was inserted three types of failures: rotor blade (new and damaged), pump soleplate tightness (stiff or loose), and cavitation, in this case on three conditions: none, incipient and severe, totaling twelve fault combinations. These conditions were tested under two different speeds to perform the diagnosis, totaling twenty-four tests. In all cases, the vibration signals from axes X, Y, and Z were acquired. Some features extracted from the vibration spectra from X-axis were used to compose the dataset. These data were analyzed employing logistic regression, a linear support vector machine (SVM), and an artificial neural network multilayer perceptron (ANN-MLP). We compared these three techniques of machine learning and evaluated which one was able to obtain the most accurate result. Using the ANN-MLP, the system was able to detect all three types of failures inserted, with about 100% of accuracy on the rotor blade condition, 92% for anchorage faults, and about 99% accuracy on cavitation state. As a conclusion, it is demonstrated that this classifier algorithm can be used to process the data from the low-cost MEMS accelerometer in predictive maintenance as an accurate tool.
topic mems accelerometer. diagnosis by vibration. diagnostic classifiers. logistic regression. linear svm. ann-mlp
url http://www.uel.br/revistas/uel/index.php/semexatas/article/view/41564
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