Abstract

Electricity is important because it is the most common energy source that we consume and depend on in our everyday lives. Consequently, the forecasting of electricity sales is essential. Typical forecasting approaches often generate electricity sales forecasts based on certain explanatory variables. However, these forecasting approaches are limited by the fact that future explanatory variables are unknown. To improve forecasting accuracy, recent hybrid forecasting approaches have developed different feature selection techniques (FSTs) to obtain fewer but more significant explanatory variables. However, these significant explanatory variables will still not be available in the future, despite being screened by effective FSTs. This study proposes the autoregressive integrated moving average (ARIMA) technique to serve as the FST for hybrid forecasting models. Aside from the ARIMA element, the proposed hybrid models also include artificial neural networks (ANN) and multivariate adaptive regression splines (MARS) because of their efficient and fast algorithms and effective forecasting performance. ARIMA can identify significant self-predictor variables that will be available in the future. The significant self-predictor variables obtained can then serve as the inputs for ANN and MARS models. These hybrid approaches have been seldom investigated on the electricity sales forecasting. This study proposes several forecasting models that do not require explanatory variables to forecast the industrial electricity, residential electricity, and commercial electricity sales in Taiwan. The experimental results reveal that the significant self-predictor variables obtained from ARIMA can improve the forecasting accuracy of ANN and MARS models.

Highlights

  • Electricity is one of the most important sources of energy on earth

  • This study proposed the single artificial neural networks (ANN), single multivariate adaptive regression splines (MARS), hybrid autoregressive integrated moving average (ARIMA) and ANN (ARIMA-ANN), and hybrid ARIMA and MARS (ARIMA-MARS) models to forecast the industrial electricity, residential electricity, and commercial electricity sales (IERECES) in Taiwan without using any explanatory variables

  • By observing the MARS forecasting function and basis functions (BFs) in Equation (12) and Table 3, we find that

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Summary

Introduction

Typical approaches use single-stage or single models to forecast electricity sales. Single models use two kinds of forecasting techniques: statistical modeling and soft computing modeling. The impacts of population and weather-sensitive parameters on electricity consumption in Delhi were investigated [1]. Different multiple linear regression models were developed for the various seasons. The residential demand for electricity in Taiwan from 1955 to 1996 was investigated [2]. In [2], it was assumed that the electricity demand was a function of population growth, electricity prices, the degree of urbanization, and household disposable income. Different long-term regression models for the prediction of electricity consumption in Italy have been proposed [3]. The explanatory variables included gross domestic product (GDP), GDP per capita, and population.

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