4.7 Article

Forecasting intra-hour variance of photovoltaic power using a new integrated model

Journal

ENERGY CONVERSION AND MANAGEMENT
Volume 245, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.enconman.2021.114569

Keywords

Forecasting; Hybrid models; Renewable energy; Signal decomposition

Funding

  1. electricity and renewable energy company SKTM
  2. SONELGAZ group

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This paper focuses on the intermittent nature of photovoltaic solar power generation and successfully develops a new integrated PV power forecasting model using iterative filtering and Extreme Learning Machine (ELM). Results show that the proposed IF-ELM model can accurately predict PV power under different climatic conditions, outperforming other standalone models and decomposition methods in terms of forecasting performance.
Photovoltaic (PV) solar power, which is considered as the most competitive clean energy source, contributes to a significant percentage of electricity production in many developed countries. However, accurate PV power forecasting is necessary due to its high variation that can be caused by several factors. Hence, the intermittent nature of PV production represents a major challenge to integrate PV systems into the electric grid. The scope of this paper deals with this issue through developing a new integrated PV power forecasting model. The proposed model is based on the use of a new decomposition methodology, named Iterative Filtering for decomposing PV power into different intrinsic functions (IMFs), then Extreme Learning Machine (ELM) is used as essence predictor. To this end, the proposed IF-ELM model is evaluated on three solar PV power plants installed at three different sites, with different climatic conditions. Direct and recursive IF-ELM methodologies are examined for multi-step ahead forecasting in a very short time-scale (up to 60 min). Overall, the forecasting results show high precision performance for the studied forecasting horizons- in terms of different statistical metrics compared to stand-alone models. Also, the proposed IF method shows its high performance when compared to the recently developed decomposition method. complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) in improving the forecasting accuracy of a single model. Forecasting results with the IF-ELM model led to an error in nRMSE that is less than 10% and a Correlation Coefficient greater than 98% over all forecasting horizons.

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