A Comprehensive Mathematical Model for Analysis of WR-Resolvers under Stator Short Circuit Fault
Publish Year: 1398
Type: Journal paper
Language: English
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Document National Code:
JR_JECEI-7-1_002
Index date: 4 December 2019
A Comprehensive Mathematical Model for Analysis of WR-Resolvers under Stator Short Circuit Fault abstract
Wound-Rotor (WR) resolvers are the most widely used position sensors in applications with harsh environmental conditions. However, their performance is exposed to failure due to the high risk of short circuit (SC) fault. Although the output current of the resolver is negligible, its thin copper wires increase the probability of the short circuit fault. To avoid the propagation of the turn-to-turn SC fault to the whole coil and undesirable performance of the motion control drive, it is necessary to diagnose it at the very beginning of its development. Meanwhile, the first step of diagnosing faults is their modeling. Time stepping finite element analysis is the most accurate, but computationally expensive method for modeling the electromagnetic devices. Therefore, it is required to establish an accurate, yet computationally fast model. In this regard, an analytical model based on d-q axes theory is proposed to consider multiple faults, simultaneously. Then, the success of the proposed model is validated by experimental tests on the studied sensor.
A Comprehensive Mathematical Model for Analysis of WR-Resolvers under Stator Short Circuit Fault Keywords:
A Comprehensive Mathematical Model for Analysis of WR-Resolvers under Stator Short Circuit Fault authors
Hamed Lasjerdi
Electrical Eng. Department Sharif Uni. of Technology
Zahra Nasiri-Gheidari
Department of Electrical Engineering.Sharif University of Technology
Farid Tootoonchian
Elec. Eng. Department Iran University of Technology
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