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Day-ahead power forecasting in a large-scale photovoltaic plant based on weather classification using LSTM

机译:使用LSTM基于天气分类的大型光伏电站的日前功率预测

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摘要

Photovoltaic (PV) solar power generation is always associated with uncertainties due to weather parameters intermittency. This poses difficulties in grid management as solar penetration rate rise continuously. Thus, accurate Photovoltaic (PV) power prediction is required for the successful integration of solar energy into the power grid, and short-term forecasting (minutes-1 day ahead) is significant for real-time power dispatching. Day-ahead power output time-series forecasting methods are proposed in this paper, in which ideal weather type and non-ideal weather types have been separately discussed. For ideal weather conditions, a forecasting method is proposed based on meteorology data of next day for ideal weather condition, using long short term memory (LSTM) networks. For non-ideal weather conditions. time-series relevance and specific non-ideal weather type characteristic are considered in LSTM model by introducing adjacent day time-series and typical weather type information. Specifically, daily total power, which is obtained by discrete grey model (DGM), is regarded as input variables and applied to correct power output time-series prediction. Prediction performance comparison between proposed methods with traditional algorithms reveal that the RMSE accuracy of forecasting methods based on LSTM networks can reach 4.62% for ideal weather condition. For non-ideal weather condition, the dynamic characteristic is effectively described by proposed methods and the proposed methods obtained superior prediction accuracy. (C) 2019 Published by Elsevier Ltd.
机译:由于天气参数的间歇性,光伏(PV)太阳能发电始终与不确定性相关。随着太阳能渗透率的不断提高,这给电网管理带来了困难。因此,要使太阳能成功集成到电网中,就需要准确的光伏(PV)功率预测,而短期预测(提前1分钟到1天)对于实时功率分配至关重要。提出了日均功率输出时间序列的预测方法,分别讨论了理想天气类型和非理想天气类型。对于理想的天气状况,利用长短期记忆(LSTM)网络,基于第二天的理想天气状况的气象数据,提出了一种预测方法。对于非理想的天气条件。通过引入相邻日时间序列和典型的天气类型信息,在LSTM模型中考虑了时间序列相关性和特定的非理想天气类型特征。具体而言,将通过离散灰色模型(DGM)获得的每日总功率视为输入变量,并将其应用于正确的功率输出时间序列预测。与传统算法的预测性能比较表明,在理想天气条件下,基于LSTM网络的预测方法的RMSE精度可以达到4.62%。对于非理想的天气状况,通过所提出的方法有效地描述了动态特性,并且所提出的方法获得了优异的预测精度。 (C)2019由Elsevier Ltd.发布

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