Area day‐ahead photovoltaic power prediction by just‐in‐time modeling with meso‐scale ensemble prediction system

Photovoltaics (PV) output prediction, which is indispensable for power system operation, can affects demand and supply adjustment adversely when large prediction error occurs. Thus, the reduction of large error as well as average error is required in PV power prediction. In 2019, the operation of the Meso‐scale Ensemble Prediction System (MEPS) of numerical weather prediction started from the JapanMeteorological Agency, and the amount of forecasting information would be potentially useful for the improvement of PV power prediction. However, very few studies on inputting multiple meteorological elements of the MEPS have been reported. In this paper, we newly develop the prediction model for an area day‐ahead PV power output composed of Just‐In‐Time Modeling (JIT Modeling) with multiple elements of theMEPS. The developed method achieves precise forecasts with low computational load by both selecting meteorological elements valid for improving prediction accuracy and adequately devising the structure of JIT Modeling. Some numerical examples demonstrating the effectiveness of the developed method are also presented. In particular, the proposed method reduces large error significantly.

[1]  Yuki Honda,et al.  Regional Solar Irradiance Forecast for Kanto Region by Support Vector Regression Using Forecast of Meso-Ensemble Prediction System , 2021 .

[2]  Hideaki Ohtake,et al.  Use of Meso-ensemble Prediction System for Renewable Power Forecast and its Future Task , 2021 .

[3]  K. Ogimoto,et al.  Making Renewables Work: Operational Practices and Future Challenges for Renewable Energy as a Major Power Source in Japan , 2020, IEEE Power and Energy Magazine.

[4]  M. Kunii,et al.  The regional model‐based Mesoscale Ensemble Prediction System, MEPS, at the Japan Meteorological Agency , 2020, Quarterly Journal of the Royal Meteorological Society.

[5]  Walter H. F. Smith,et al.  The Generic Mapping Tools Version 6 , 2019, Geochemistry, Geophysics, Geosystems.

[6]  T. Oozeki,et al.  Outlier Events of Solar Forecasts for Regional Power Grid in Japan Using JMA Mesoscale Model , 2018, Energies.

[7]  Henrik Madsen,et al.  Multi-site solar power forecasting using gradient boosted regression trees , 2017 .

[8]  Yu Fujimoto,et al.  Estimation Prediction Interval of Solar Irradiance Based on Just‐in‐Time Modeling for Photovoltaic Output Prediction , 2016 .

[9]  T. Takashima,et al.  Regional forecasts of photovoltaic power generation according to different data availability scenarios: a study of four methods , 2015 .

[10]  T. Oozeki,et al.  Forecasting of solar irradiance with just‐in‐time modeling , 2013 .

[11]  Radford M. Neal Pattern Recognition and Machine Learning , 2007, Technometrics.

[12]  Andrew W. Moore,et al.  Locally Weighted Learning , 1997, Artificial Intelligence Review.