Low Error Rate Induction Machine Parameter Estimation with Recurrent Neural Network


연구 분야: Artificial Intelligence



학회: 2023 2nd International Engineering Conference on Electrical, Energy, and Artificial Intelligence (EICEEAI)


초록

Induction machines are widely preferred in plants due to their uncomplicated structure and low maintenance requirements. In order to achieve effective control over the operations of these machines, it is crucial to possess accurate information about their parameters. The estimation of these parameters can be accomplished through the utilization of artificial neural networks. Nevertheless, the majority of studies undertaken for parameter estimation were inadequate in accurately representing the network architecture's performance or achieving the desired precision. This was mostly due to the low amount of available data and the reliance on data from a single experimental setting. This study evaluates a recurrent neural network with a concise and flexible structure to address data insufficiency and the reliance on a singular experimental setting. This evaluation involves using a substantial dataset and optimizing the network parameters to achieve the most efficient network structure. Upon completion of the study, the proposed approach demonstrated promising results with high correlation levels and minimal error rates.


Author Profile
Sema Nur Ipek

Department of Electrical Energy Istanbul Aydin University Istanbul Turkey

Turkey
Author Profile
Murat Taskiran

Department of Electronics and Communication Engineering Yildiz Technical University Istanbul Turkey

Andorra
Author Profile
Nur Bekiroglu

Department of Electrical Engineering Yildiz Technical University Istanbul Turkey

Turkey

📄 논문 정보

발행 연도 2023년
인용수 59
출판 국가 Andorra, Turkey
사이트 IEEE
좋아요 수 0

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