Please use this identifier to cite or link to this item: http://earchive.tpu.ru/handle/11683/57043
Title: Solar photovoltaic power output forecasting using machine learning technique
Authors: Dinh Van Tai
Keywords: прогнозирование; солнечная энергия; источники энергии; фотоэлектрические системы; машинное обучение; окружающая среда; искусственные нейронные сети
Issue Date: 2019
Publisher: IOP Publishing
Citation: Dinh Van Tai. Solar photovoltaic power output forecasting using machine learning technique / Dinh Van Tai // Journal of Physics: Conference Series. — 2019. — Vol. 1327 : Innovations in Non-Destructive Testing (SibTest 2019) : V International Conference, 26–28 June 2019, Yekaterinburg, Russia : [proceedings]. — [012051, 5 р.].
Abstract: Photovoltaic (PV) systems are used around the world to generate solar power. Solar power sources are irregular in nature due to the output power of PV systems being intermittent and depending greatly on environmental factors. These factors include, but are not limited to, irradiance, humidity, PV surface temperature, speed of the wind. Due to uncertainties in the photovoltaic generation, it is critical to precisely envisage the solar power generation. Solar power forecasting is necessary for supply and demand planning in an electric grid. This prediction is highly complex and challenging as solar power generation is weather-dependent and uncontrollable. This paper describes the effects of various environmental parameters on the PV system output. Prediction models based on Artificial Neural Networks (ANN) and regression models are evaluated for selective factors. The selection is done by using the correlation-based feature selection (CSF) and ReliefF techniques. The ANN model outperforms all other techniques that were discussed.
URI: http://earchive.tpu.ru/handle/11683/57043
Appears in Collections:Материалы конференций

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