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Ultra-short-term prediction method of photovoltaic electric field power based on ground-based cloud image segmentation

机译:基于地面云图像分割的超短期预测方法光伏电场功率

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As a large number of photovoltaic power stations are built and put into operation, the total amount of photovoltaic power generation accounts for an increasing proportion of the total electricity. The inability to accurately predict solar energy output has brought great uncertainty to the grid. Therefore, predicting the future power of photovoltaic fields is of great significance. According to different time scales, predictions are divided into long-term, medium-term and ultra-short-term predictions. The main difficulty of ultra-short-term forecasting lies in the power fluctuations caused by sudden and drastic changes in environmental factors. The shading of clouds is directly related to the irradiance received on the surface of the photovoltaic panel, which has become the main factor affecting the fluctuation of photovoltaic power generation. Therefore, sky images captured by conventional cameras installed near solar panels can be used to analyze cloud characteristics and improve the accuracy of ultra-short-term predictions. This paper uses historical power information of photovoltaic power plants and cloud image data, combined with machine learning methods, to provide ultra-short-term predictions of the power generation of photovoltaic power plants. First, the random forest method is used to use historical power generation data to establish a single time series prediction model to predict ultra-short-term power generation. Compared with the continuous model, the root mean square (RMSE) error of prediction is reduced by 28.38%. Secondly, the Unet network is used to segment the cloud image, and the cloud amount information is analyzed and input into the random forest prediction model to obtain the bivariate prediction model. The experimental results prove that, based on the cloud amount information contained in the cloud chart, the bivariate prediction model has an 11.56% increase in prediction accuracy compared with the single time series prediction model, and an increase of 36.66% compared with the continuous model.
机译:随着大量光伏发电站建造并投入运行,光伏发电总量占总电力比例的增加。无法准确地预测太阳能输出对网格带来了很大的不确定性。因此,预测光伏田的未来功率具有重要意义。根据不同的时间尺度,预测分为长期,中期和超短术语预测。超短期预测的主要难度在于环境因素突然和激烈变化引起的电力波动。云的阴影与光伏面板表面接收的辐照度直接相关,这已成为影响光伏发电波动的主要因素。因此,由安装在太阳能电池板附近的传统相机捕获的天空图像可用于分析云特性并提高超短期预测的准确性。本文采用光伏发电厂和云图像数据的历史电力信息,结合机器学习方法,提供了光伏发电厂发电的超短短期预测。首先,随机森林方法用于使用历史发电数据来建立单个时间序列预测模型以预测超短术发电。与连续模型相比,预测的根均线(RMSE)误差减少了28.38%。其次,UNET网络用于分割云图像,并且分析云量信息并输入随机森林预测模型以获得Bivariate预测模型。实验结果证明,基于云图中包含的云量信息,与单时间序列预测模型相比,双变量预测模型的预测精度增加了11.56%,与连续模型相比增加了36.66% 。

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