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## NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR

### Shaded-pole induction motors (SPIMs) are often preferred in small power applications owing to their ability to work with single-phase power source, simple structure and low-cost properties. Such motors are within the class easy to manufacture, but the most difficult to analyze mathematically due to the fact that they have a variable air gap and elliptical rotating magnetic field, which leads to highly complex inductance calculations. Considering that the identification accuracy of phase variables is directly related to the correct knowledge of inductances in AC machines, the authors of this article attempt to realize a neural network (NN)-based inductance estimation in-between the stator and rotor, and also in-between the shading ring (shaded-pole winding) and rotor loop for an industrial SPIM. For this aim, corresponding inductance measurements are made first experimentally in terms of each 3.6º electrical position, and as such, a total of 101 data samples have been collected. %70 of them are considered as training data to train the NN while the remainder is adopted for testing the generation capability of NN. Results in comparison with the actual values have affirmed the excellence performance of the introduced NN in simultaneous estimation of the concerned two important inductances.

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Birincil Dil en Mühendislik, Ortak Disiplinler Makaleler Orcid: 0000-0002-2961-0035Yazar: Emre ÇELİK (Sorumlu Yazar)Kurum: Düzce ÜniversitesiÜlke: Turkey
 Bibtex @araştırma makalesi { ijees488851, journal = {The International Journal of Energy \& Engineering Sciences}, issn = {2602-294X}, address = {Gaziantep Üniversitesi}, year = {2019}, volume = {3}, pages = {36 - 45}, doi = {}, title = {NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR}, key = {cite}, author = {ÇELİK, Emre} } APA ÇELİK, E . (2019). NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR. The International Journal of Energy & Engineering Sciences, 3 (2), 36-45. Retrieved from http://dergipark.gov.tr/ijees/issue/35485/488851 MLA ÇELİK, E . "NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR". The International Journal of Energy & Engineering Sciences 3 (2019): 36-45 Chicago ÇELİK, E . "NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR". The International Journal of Energy & Engineering Sciences 3 (2019): 36-45 RIS TY - JOUR T1 - NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR AU - Emre ÇELİK Y1 - 2019 PY - 2019 N1 - DO - T2 - The International Journal of Energy & Engineering Sciences JF - Journal JO - JOR SP - 36 EP - 45 VL - 3 IS - 2 SN - 2602-294X- M3 - UR - Y2 - 2019 ER - EndNote %0 The International Journal of Energy & Engineering Sciences NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR %A Emre ÇELİK %T NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR %D 2019 %J The International Journal of Energy & Engineering Sciences %P 2602-294X- %V 3 %N 2 %R %U ISNAD ÇELİK, Emre . "NEURAL NETWORK ESTIMATION OF MUTUAL INDUCTANCE VARIATION FOR A SHADED-POLE INDUCTION MOTOR". The International Journal of Energy & Engineering Sciences 3 / 2 (Ocak 2019): 36-45.