TY - GEN
T1 - A Low-Complexity Algorithm for Diagnosis of Three-Phase Induction Motors
AU - Baltazar, Marco
AU - Ramírez, Brian
AU - Kemper, Guillermo
N1 - Publisher Copyright:
© 2021, The Author(s), under exclusive license to Springer Nature Switzerland AG.
PY - 2021
Y1 - 2021
N2 - Three-phase motors are made up of different pieces and parts that, when worn, increase mechanical vibrations. These vibrations generate multiple frequencies and their respective harmonics, so detection and classification must be done in the frequency domain. The faults also depend on the shaft’s rotational frequency and the power supply frequency. State-of-the-art algorithms for motor failure detection and classification are complex since they involve processing in the time domain and the frequency domain. Given this, the present work proposes a low complexity algorithm based on wireless monitoring of certain frequency components’ amplitude to define the degree of severity of vibrations in a three-phase motor. The algorithm consists of filtering the signal through a bank of low-pass filters, obtaining frequency spectra through the FFT, averaging the modulus spectra to reduce noise and distortion, and evaluating the amplitudes of the components of the frequency of failure in order to detect and identify the degree of severity based on reference levels of velocity. The algorithm offers a quantitative-qualitative diagnosis because based on an amplitude (quantitative), we designate a level of severity (qualitative). Now the technician offers a qualitative diagnosis - qualitative. In this case, the technician’s verbal coincidences determine the level of severity according to ISO 20816-1: 2016. Then the coincidences at the level of severity (qualitative) establish the certainty of the algorithm developed concerning the technician’s diagnosis. The diagnosis coincidence establishes a result with a high level of reliability based on the similarity between the technician’s diagnosis and the algorithm.
AB - Three-phase motors are made up of different pieces and parts that, when worn, increase mechanical vibrations. These vibrations generate multiple frequencies and their respective harmonics, so detection and classification must be done in the frequency domain. The faults also depend on the shaft’s rotational frequency and the power supply frequency. State-of-the-art algorithms for motor failure detection and classification are complex since they involve processing in the time domain and the frequency domain. Given this, the present work proposes a low complexity algorithm based on wireless monitoring of certain frequency components’ amplitude to define the degree of severity of vibrations in a three-phase motor. The algorithm consists of filtering the signal through a bank of low-pass filters, obtaining frequency spectra through the FFT, averaging the modulus spectra to reduce noise and distortion, and evaluating the amplitudes of the components of the frequency of failure in order to detect and identify the degree of severity based on reference levels of velocity. The algorithm offers a quantitative-qualitative diagnosis because based on an amplitude (quantitative), we designate a level of severity (qualitative). Now the technician offers a qualitative diagnosis - qualitative. In this case, the technician’s verbal coincidences determine the level of severity according to ISO 20816-1: 2016. Then the coincidences at the level of severity (qualitative) establish the certainty of the algorithm developed concerning the technician’s diagnosis. The diagnosis coincidence establishes a result with a high level of reliability based on the similarity between the technician’s diagnosis and the algorithm.
KW - Diagnostics
KW - Fault detection
KW - FFT
KW - Spectral averaging
KW - Three-phase motor
KW - Vibrations
UR - https://www.scopus.com/pages/publications/85111362129
U2 - 10.1007/978-3-030-75680-2_102
DO - 10.1007/978-3-030-75680-2_102
M3 - Contribución a la conferencia
AN - SCOPUS:85111362129
SN - 9783030756796
T3 - Smart Innovation, Systems and Technologies
SP - 929
EP - 948
BT - Proceedings of the 6th Brazilian Technology Symposium, BTSym 2020 - Emerging Trends and Challenges in Technology
A2 - Iano, Yuzo
A2 - Saotome, Osamu
A2 - Kemper, Guillermo
A2 - Mendes de Seixas, Ana Claudia
A2 - Gomes de Oliveira, Gabriel
PB - Springer Science and Business Media Deutschland GmbH
T2 - 6th Brazilian Technology Symposium, BTSym 2020
Y2 - 26 October 2020 through 28 October 2020
ER -