4.5 Article

Equipping Seasonal Exponential Smoothing Models with Particle Swarm Optimization Algorithm for Electricity Consumption Forecasting

Journal

ENERGIES
Volume 14, Issue 13, Pages -

Publisher

MDPI
DOI: 10.3390/en14134036

Keywords

electricity consumption forecasting; seasonal exponential smoothing models; particle swarm optimization algorithm; grid search method; genetic algorithm

Categories

Funding

  1. Humanities and Social Sciences Projects of Jiangxi [GL19115]
  2. Science and Technology Research Projects of Jiangxi [GJJ191188, GJJ202905]
  3. Key R&D Projects of Jiangxi [20192BBHL80015]
  4. Jiangxi Principal Academic and Technical Leaders Program [20194BCJ22015]
  5. Natural Science Foundation of China [71571080, 71871101]

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Electricity consumption forecasting is crucial for investment planning and production/distribution in the electricity sector. This study utilized SES models and PSO algorithm for modeling and conducted comprehensive assessments on real-world datasets, showing that PSO outperformed grid search and genetic algorithms in terms of accuracy and efficiency.
Electricity consumption forecasting plays an important role in investment planning of electricity infrastructure, and in electricity production/generation and distribution. Accurate electricity consumption prediction over the mid/long term is of great interest to both practitioners and academics. Considering that monthly electricity consumption series usually show an obvious seasonal variation due to their inherent nature subject to temperature during the year, in this paper, seasonal exponential smoothing (SES) models were employed as the modeling technique, and the particle swarm optimization (PSO) algorithm was applied to find a set of near-optimal smoothing parameters. Quantitative and comprehensive assessments were performed with two real-world electricity consumption datasets on the basis of prediction accuracy and computational cost. The experimental results indicated that (1) whether the accuracy measure or the elapsed time was considered, the PSO performed better than grid search (GS) or genetic algorithm (GA); (2) the proposed PSO-based SES model with a non-trend component and additive seasonality term significantly outperformed other competitors for the majority of prediction horizons, which indicates that the model could be a promising alternative for electricity consumption forecasting.

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