4.6 Article

Solar Photovoltaic Power Prediction Using Big Data Tools

Journal

SUSTAINABILITY
Volume 13, Issue 24, Pages -

Publisher

MDPI
DOI: 10.3390/su132413685

Keywords

big data tools; solar irradiance; solar PV power prediction model; weather data

Funding

  1. Korea Institute of Energy Technology Evaluation and Planning (KETEP)
  2. Ministry of Trade, Industry & Energy (MOTIE) of the Republic of Korea [20192010107050]

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This paper presents a prediction model for calculating solar PV power based on historical data and demonstrates the variability of solar PV power for each day in a summer season. The simulation results show relatively accurate forecasting.
Solar photovoltaic (PV) installation has been continually growing to be utilized in a grid-connected or stand-alone network. However, since the generation of solar PV power is highly variable because of different factors, its accurate forecasting is critical for a reliable integration to the grid and for supplying the load in a stand-alone network. This paper presents a prediction model for calculating solar PV power based on historical data, such as solar PV data, solar irradiance, and weather data, which are stored, managed, and processed using big data tools. The considered variables in calculating the solar PV power include solar irradiance, efficiency of the PV system, and characteristics of the PV system. The solar PV power profiles for each day of January, which is a summer season, were presented to show the variability of the solar PV power in numerical examples. The simulation results show relatively accurate forecasting with 17.57 kW and 2.80% as the best root mean square error and mean relative error, respectively. Thus, the proposed solar PV power prediction model can help power system engineers in generation planning for a grid-connected or stand-alone solar PV system.

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