Title :
Input-output model identification of small and large induction motors using multilayer feedforward neural networks
Author :
Jang, Seog Sue ; Ahmed-Zaid, Said ; Taylor, Carson W. ; Sobajic, Dejan J.
Author_Institution :
Clarkson Univ., Potsdam, NY, USA
Abstract :
A multilayer feedforward neural network is used to realize a moving-average model of an induction motor. This input-output representation generalizes earlier, widely-used static load models to include dynamic loads. The new model can easily be integrated in existing power flow and stability programs. The validity of the proposed methodology is demonstrated with the successful identification of small and large induction motors described by first-order and third-order differential models, respectively. The neural network-based models can accurately predict the machine real and reactive power consumptions under simultaneous or separate voltage and frequency disturbances
Keywords :
electric machine analysis computing; feedforward neural nets; induction motors; machine theory; moving average processes; multilayer perceptrons; computer simulation; dynamic loads; first-order differential models; frequency disturbances; induction motor; input-output representation; moving-average model; multilayer feedforward neural network; reactive power consumption; real power consumption; third-order differential models; voltage disturbances; Feedforward neural networks; Induction motors; Load flow; Load modeling; Multi-layer neural network; Neural networks; Predictive models; Reactive power; Stability; Voltage;
Conference_Titel :
Electric Machines and Drives Conference Record, 1997. IEEE International
Conference_Location :
Milwaukee, WI
Print_ISBN :
0-7803-3946-0
DOI :
10.1109/IEMDC.1997.604186