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Ultra Short-Term Power Load Forecasting Based on Similar Day Clustering and Ensemble Empirical Mode Decomposition

Wenhui Zeng, Jiarui Li, Changchun Sun, Lin Cao, Xiaoping Tang, Shaolong Shu, Junsheng Zheng

2023Energies30 citationsDOIOpen Access PDF

Abstract

With the increasing demand of the power industry for load forecasting, improving the accuracy of power load forecasting has become increasingly important. In this paper, we propose an ultra short-term power load forecasting method based on similar day clustering and EEMD (Ensemble Empirical Mode Decomposition). In detail, the K-means clustering algorithm was utilized to divide the historical data into different clusters. Through EEMD, the load data of each cluster were decomposed into several sub-sequences with different time scales. The LSTNet (Long- and Short-term Time-series Network) was adopted as the load forecasting model for these sub-sequences. The forecast results for different sub-sequences were combined as the expected result. The proposed method predicts the load in the next 4 h with an interval of 15 min. The experimental results show that the proposed method obtains higher prediction accuracy than other comparable forecasting models.

Topics & Concepts

Hilbert–Huang transformCluster analysisTerm (time)Computer scienceSeries (stratigraphy)Data miningMode (computer interface)Power (physics)Time seriesCluster (spacecraft)Electric power systemArtificial intelligenceMachine learningQuantum mechanicsProgramming languageFilter (signal processing)Operating systemBiologyPaleontologyPhysicsComputer visionEnergy Load and Power ForecastingGrey System Theory ApplicationsStock Market Forecasting Methods
Ultra Short-Term Power Load Forecasting Based on Similar Day Clustering and Ensemble Empirical Mode Decomposition | Litcius