Automatic Selection of Temperature Variables for Short-Term Load Forecasting

Author:

Candela Esclapez AlfredoORCID,López García Miguel,Valero Verdú SergioORCID,Senabre Blanes CarolinaORCID

Abstract

Due to the infeasibility of large-scale electrical energy storage, electricity is generated and consumed simultaneously. Therefore, electricity entities need consumption forecasting systems to plan operations and manage supplies. In addition, accurate predictions allow renewable energies on electrical grids to be managed, thereby reducing greenhouse gas emissions. Temperature affects electricity consumption through air conditioning and heating equipment, although it is the consumer’s behavior that determines specifically to what extent. This work proposes an automatic method of processing and selecting variables, with a two-fold objective: improving both the accuracy and the interpretability of the overall forecasting system. The procedure has been tested by the predictive system of the Spanish electricity operator (Red Eléctrica de España) with regard to peninsular demand. During the test period, the forecasting error was consistently reduced for the forecasting horizon, with an improvement of 0.16% in MAPE and 59.71 MWh in RMSE. The new way of working with temperatures is interpretable, since they separate the effect of temperature according to location and time. It has been observed that heat has a greater influence than the cold. In addition, on hot days, the temperature of the second previous day has a greater influence than the previous one, while the opposite occurs on cold days.

Funder

Red Electrica de Espana

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference40 articles.

1. Short-Term Stochastic Load Forecasting Using Autoregressive Integrated Moving Average Models and Hidden Markov Model;Hermias;Proceedings of the 2017 International Conference on Information and Communication Technologies (ICICT),2017

2. Autoregressive Method in Short Term Load Forecast;Baharudin;Proceedings of the 2008 IEEE 2nd International Power and Energy Conference,2008

3. Forecasting next-day electricity demand and prices based on functional models

4. Short-Term Power Load Forecasting Method Based on Improved Exponential Smoothing Grey Model

5. A Study on Exponential Smoothing Model for Load Forecasting;Ji;Proceedings of the 2012 Asia-Pacific Power and Energy Engineering Conference,2012

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