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http://dx.doi.org/10.14400/JDC.2014.12.3.211

Design of short-term forecasting model of distributed generation power for wind power  

Song, Jae-Ju (KEPCO, Software Center SW Engineering)
Jeong, Yoon-Su (Dept. of Information Communication & Engineering, Mokwon University)
Lee, Sang-Ho (Dept. of Software, Chungbuk National University)
Publication Information
Journal of Digital Convergence / v.12, no.3, 2014 , pp. 211-218 More about this Journal
Abstract
Recently, wind energy is expanding to combination of computing to forecast of wind power generation as well as intelligent of wind powerturbine. Wind power is rise and fall depending on weather conditions and difficult to predict the output for efficient power production. Wind power is need to reliably linked technology in order to efficient power generation. In this paper, distributed power generation forecasts to enhance the predicted and actual power generation in order to minimize the difference between the power of distributed power short-term prediction model is designed. The proposed model for prediction of short-term combining the physical models and statistical models were produced in a physical model of the predicted value predicted by the lattice points within the branch prediction to extract the value of a physical model by applying the estimated value of a statistical model for estimating power generation final gas phase produces a predicted value. Also, the proposed model in real-time National Weather Service forecast for medium-term and real-time observations used as input data to perform the short-term prediction models.
Keywords
IMD; Key Distribution; Protocol; RSA;
Citations & Related Records
Times Cited By KSCI : 4  (Citation Analysis)
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