Prediction of Day-ahead Photovoltaic Output Based on FCM-WS-CNN

被引:0
|
作者
Lü W. [1 ]
Fang Y. [1 ]
Cheng Z. [1 ]
机构
[1] School of Electrical and Information Engineering, Tianjin University, Nankai District, Tianjin
来源
基金
中国国家自然科学基金;
关键词
Convolutional neural network; Fuzzy c-means clustering; Photovoltaic output prediction; Principal component analysis; Weighted sample;
D O I
10.13335/j.1000-3673.pst.2020.2246
中图分类号
学科分类号
摘要
In order to deal with the challenges brought by large-scale photovoltaic grid-connection to the power grid dispatching, an FCM-WS-CNN model is proposed to predict the day-ahead and minute-level photovoltaic outputs. First, the distance correlation coefficient and the principal component analysis are used to extract the comprehensive meteorological factors from the original meteorological data. Then, taking the five statistical indicators of the comprehensive meteorological factors and the historical power data as the clustering features, the fuzzy C-means clustering is used to classify the historical data according to the different weather types, and the training samples are weighted based on the membership matrix. Finally, the FCM-WS-CNN model is constructed using the training data. In the experimental analysis, the above method is compared with the CNN model and the FCM-CNN model. The results show that the effectiveness of the proposed method is verified with its higher accuracy and robustness. © 2022, Power System Technology Press. All right reserved.
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收藏
页码:231 / 238
页数:7
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共 21 条
  • [1] HOEVEN M., Technology roadmap: solar photovoltaic energy, pp. 46-60, (2014)
  • [2] ZERVOS A, LINS C, MUTH J., Re-Thinking 2050: a 100% renewable energy vision for the European union, pp. 27-58, (2010)
  • [3] ZHANG Fan, DEB C, LEE S E, Et al., Time series forecasting for building energy consumption using weighted Support Vector Regression with differential evolution optimization technique, Energy and Buildings, 126, pp. 94-103, (2016)
  • [4] LIN Kuoping, PAI Pingfeng, Solar power output forecasting using evolutionary seasonal decomposition least-square support vector regression, Journal of Cleaner Production, 134, pp. 456-462, (2016)
  • [5] ZHAO Jing, GUO Zhenhai, SU Zhongyue, Et al., An improved multi-step forecasting model based on WRF ensembles and creative fuzzy systems for wind speed, Applied Energy, 162, pp. 808-826, (2016)
  • [6] ZAMEER A, ARSHAD J, KHAN A, Et al., Intelligent and robust prediction of short term wind power using genetic programming based ensemble of neural networks, Energy Conversion and Management, 134, pp. 361-372, (2017)
  • [7] ALONSO-MONTESINOS J, BATLLES F J, PORTILLO C., Solar irradiance forecasting at one-minute intervals for different sky conditions using sky camera images, Energy Conversion and Management, 105, pp. 1166-1177, (2015)
  • [8] LIU Jie, CHEN Xuemei, LU Chao, Et al., Two-stage photovoltaic power forecasting and error correction method based on statistical characteristics of data, Power System Technology, 44, 8, pp. 2891-2897, (2020)
  • [9] WANG Su, JIANG Xin, ZENG Liang, Et al., Ultra-short-term photovoltaic power prediction based on VMD-DESN-MSGP model, Power System Technology, 44, 3, pp. 917-926, (2020)
  • [10] HAI Tao, WEN Kewei, ZHOU Ling, Et al., Design of photovoltaic power generation forecast system based on meteorological similarity and Markov chain, Journal of Guangxi University (Natural Science Edition), 40, 6, pp. 1452-1460, (2015)