DocumentCode :
653647
Title :
Practical aspects of rotor cage fault detection for medium-voltage induction motors
Author :
Bin Lu ; Zhi Gao ; Benzing, Joel
Author_Institution :
Eaton Corp., Shanghai, China
fYear :
2013
fDate :
6-11 Oct. 2013
Firstpage :
1
Lastpage :
9
Abstract :
Predictive diagnostics offering early failure detection of large induction motors applied in metals, pulp & paper and other process industries are becoming increasingly important. As motors grow larger, industry has become increasingly reliant on technologies to detect rotor faults via on-line prognostics and arrange optimal maintenance intervals to increase productivity. Traditional broken rotor bar fault detection algorithms have historically relied largely on monitoring changes in the stator current spectra. This often results in nuisance warnings when the motor operates at different load levels, or when baseline data at healthy motor operations are not available. To address this issue, a fault severity evaluation technique is introduced in this paper to detect rotor cage failures using only current and voltage measurements, plus selected motor nameplate data and motor´s geometric dimensions. The fault severity index can indicate the possibility of a rotor cage fault even in the absence of baseline data. This guarantees the algorithm´s reliability in practical applications. In addition, a decision-making system, including an adaptive filter and fuzzy logic, is proposed to warn the user in the case of a rotor cage failure. Experimental results show that the proposed fault severity evaluation algorithm can reliably reflect the rotor cage status under different operating conditions, which can be further applied in the detection of rotor cage failures.
Keywords :
adaptive filters; decision making; failure analysis; fault diagnosis; fuzzy logic; induction motors; reliability; rotors; adaptive filter; algorithm reliability; broken rotor bar fault detection algorithms; current measurements; decision-making system; early failure detection; fault severity evaluation technique; fault severity index; fuzzy logic; medium-voltage induction motors; metal industry; motor geometric dimensions; motor nameplate data; optimal maintenance intervals; predictive diagnostics; process industries; pulp & paper industry; rotor cage fault detection; stator current spectra; voltage measurements; Monitoring; Rotors; Thermal expansion; Thermal stresses; Voltage measurement; Induction motor; mechanical stress; medium-voltage motor; metal industries; process industries; rotor cage fault; thermal stress;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industry Applications Society Annual Meeting, 2013 IEEE
Conference_Location :
Lake Buena Vista, FL
ISSN :
0197-2618
Type :
conf
DOI :
10.1109/IAS.2013.6682556
Filename :
6682556
Link To Document :
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