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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Universidade Estadual de Londrina
2020-12-01
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Online Access: | http://www.uel.br/revistas/uel/index.php/semexatas/article/view/41564 |
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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 |
work_keys_str_mv |
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