This paper presents the development of Short Term Load Forecasting (STLF) model using Artificial Neural Network (ANN). STLF is required for electric power planning and electricity market planning. The proposed model predicts the load demand of Connecticut in the U.S. using hourly historical electric load and weather data. For improving the load prediction accuracy, we consider two main issues that are seasons and weather factors. Each season has different load demand patterns, thus the weather factors are differently applied in each season. The proposed model uses the composited weather factor which consists of temperature and dew point. The temperature and dew point weather factors are selected through the correlation coefficient to obtain the meaningful data among the weather factors. The selected weather factors adjust the level of the pitch which is the predicted load demand of one day ahead. The proposed model improves the forecasting accuracy both in summer and winter. © 2014 SERSC.
CITATION STYLE
Kown, D., Kim, M., Hong, C., & Cho, S. (2014). Short term load forecasting based on BPL neural network with weather factors. International Journal of Multimedia and Ubiquitous Engineering, 9(1), 415–424. https://doi.org/10.14257/ijmue.2014.9.1.38
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