A SHORT-TERM PHOTOVOLTAIC POWER GENERATION POWER PREDICTION METHOD BASED ON CLOUD CLASSIFICATION USING WAVE FEATURE EXTRACTION

Zhang Rui, Li Anyi, Liu Shiyan, Xue Shiwei, Jia Qingquan, Gong Qinhai

Acta Energiae Solaris Sinica ›› 2024, Vol. 45 ›› Issue (11) : 330-342.

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Acta Energiae Solaris Sinica ›› 2024, Vol. 45 ›› Issue (11) : 330-342. DOI: 10.19912/j.0254-0096.tynxb.2023-1169

A SHORT-TERM PHOTOVOLTAIC POWER GENERATION POWER PREDICTION METHOD BASED ON CLOUD CLASSIFICATION USING WAVE FEATURE EXTRACTION

  • Zhang Rui1,2, Li Anyi1,2, Liu Shiyan1,2, Xue Shiwei1,2, Jia Qingquan3, Gong Qinhai3
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Abstract

The fluctuation of PV power is caused by the irregular movement of cloud, and its fluctuation is closely related to the weather type, which affects the prediction accuracy of short term PV power forecast, the cloud motion pattern improves the prediction accuracy. Firstly, the weather types are divided into 5 types based on NWP factor, and the PV power is divided unsmooth data and fluctuating data by variational mode decomposition. Secondly, the cloud thickness is judged by the cloud gray level, and the use of SURF is to detect the cloud feature points,and the velocity and direction of the cloud are obtained by tracking the movement of the feature points. Then, the wave shape is analyzed by the wave characteristic parameters and the wave data, so that the cloud motion state is related to the wave shape to realize the“cloud classification”. Finally, a combined forecasting algorithm based on CNN-LSTM is proposed according to the characteristics of smooth data and fluctuating pro-cess and the adaptability of machine learning algorithm. Based on the NWP correlation factor,the daily fluctuation process of PV power is taken as input and the daily fluctuation process of PV power is taken as output.

Key words

PV power generation / NWP / combination prediction / variational modal decomposition / fluctuation characteristics SUBF cloud cover monitoring / CNN-LSTM

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Zhang Rui, Li Anyi, Liu Shiyan, Xue Shiwei, Jia Qingquan, Gong Qinhai. A SHORT-TERM PHOTOVOLTAIC POWER GENERATION POWER PREDICTION METHOD BASED ON CLOUD CLASSIFICATION USING WAVE FEATURE EXTRACTION[J]. Acta Energiae Solaris Sinica. 2024, 45(11): 330-342 https://doi.org/10.19912/j.0254-0096.tynxb.2023-1169

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