Electrical Load Forecasting using ARIMA, Prophet and LSTM Networks

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Abstract

Forecasting electrical load plays a vital role in power system planning. However, it is quite difficult to forecast electrical load, as the load on the system varies continuously concerning time and seasons. In this paper, we are proposing an advanced artificial neural network model to forecast short-term electrical load. The proposed method tested on historical data collected from Karnataka power corporation, India, and test results compared with other data-driven models viz. ARIMA, RNN, LSTM, and Prophet. The accuracy and RMSE values were calculated and observed that the proposed model was superior in a day and weekly ahead electrical load forecasting.

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APA

Ananthu, D. P., & Neelashetty, K. (2021). Electrical Load Forecasting using ARIMA, Prophet and LSTM Networks. International Journal of Electrical and Electronics Research, 9(4), 114–119. https://doi.org/10.37391/IJEER.090404

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