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  4. Day-Ahead Electricity Demand Forecasting Using a Novel Decomposition Combination Method

Day-Ahead Electricity Demand Forecasting Using a Novel Decomposition Combination Method

Author(s)
Hasnain Iftikhar
Paulo Canas Rodrigues
Date Issued
18 de septiembre de 2023
Type
Article
Volume
16
Issue
18
Start Page
6675
End Page
6675
DOI
10.3390/en16186675
Abstract
In the present liberalized energy markets, electricity demand forecasting is critical for planning of generation capacity and required resources. An accurate and efficient electricity demand forecast can reduce the risk of power outages and excessive power generation. Avoiding blackouts is crucial for economic growth, and electricity is an essential energy source for industry. Considering these facts, this study presents a detailed analysis of the forecast of hourly electricity demand by comparing novel decomposition methods with several univariate and multivariate time series models. To that end, we use the three proposed decomposition methods to divide the electricity demand time series into the following subseries: a long-run linear trend, a seasonal trend, and a stochastic trend. Next, each subseries is forecast using all conceivable combinations of univariate and multivariate time series models. Finally, the multiple forecasting models are immediately integrated to provide a final one-day-ahead electricity demand forecast. The presented modeling and forecasting technique is implemented for the Nord Pool electricity market’s hourly electricity demand. Three accuracy indicators, a statistical test, and a graphical analysis are used to assess the performance of the proposed decomposition combination forecasting technique. Hence, the forecasting results demonstrate the efficiency and precision of the proposed decomposition combination forecasting technique. In addition, the final best combination model within the proposed forecasting framework is comparatively better than the best models proposed in the literature and standard benchmark models. Finally, we suggest that the decomposition combination forecasting approach developed in this study be employed to handle additional complicated power market forecasting challenges.
Subjects

Univariate

Demand forecasting

Benchmark (surveying)...

Electricity

Electricity market

Electricity price for...

Probabilistic forecas...

Decomposition

Computer science

Econometrics

Multivariate statisti...

Electric power system...

Electricity generatio...

Operations research

Economics

Power (physics)

Engineering

Machine learning

Artificial intelligen...

Physics

Geodesy

Electrical engineerin...

Probabilistic logic

Quantum mechanics

Ecology

Geography

Biology

Univariate

Demand forecasting

Benchmark (surveying)...

Electricity

Electricity market

Electricity price for...

Probabilistic forecas...

Decomposition

Computer science

Econometrics

Multivariate statisti...

Electric power system...

Electricity generatio...

Operations research

Economics

Power (physics)

Engineering

Machine learning

Artificial intelligen...

Physical Sciences Eng...

Social Sciences Econo...

Physical Sciences Eng...

Metrics
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