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首页> 外文期刊>Mathematical Problems in Engineering >Short-Term Forecasting Models for Photovoltaic Plants: Analytical versus Soft-Computing Techniques
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Short-Term Forecasting Models for Photovoltaic Plants: Analytical versus Soft-Computing Techniques

机译:光伏电站的短期预测模型:分析与软计算技术

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摘要

We present and compare two short-term statistical forecasting models for hourly average electric power production forecasts of photovoltaic (PV) plants: the analytical PV power forecasting model (APVF) and the multiplayer perceptron PV forecasting model (MPVF). Both models use forecasts from numerical weather prediction (NWP) tools at the location of the PV plant as well as the past recorded values of PV hourly electric power production. The APVF model consists of an original modeling for adjusting irradiation data of clear sky by an irradiation attenuation index, combined with a PV power production attenuation index. The MPVF model consists of an artificial neural network based model (selected among a large set of ANN optimized with genetic algorithms, GAs). The two models use forecasts from the same NWP tool as inputs. The APVF and MPVF models have been applied to a real-life case study of a grid-connected PV plant using the same data. Despite the fact that both models are quite different, they achieve very similar results, with forecast horizons covering all the daylight hours of the following day, which give a good perspective of their applicability for PV electric production sale bids to electricity markets.
机译:我们提出并比较两种短期统计预测模型,用于光伏(PV)电厂的每小时平均发电量预测:分析型PV功率预测模型(APVF)和多人感知器PV预测模型(MPVF)。两种模型均使用光伏电站所在地的数字天气预报(NWP)工具的预测以及光伏发电量的过去记录值。 APVF模型由原始模型组成,该模型可通过辐照衰减指数与PV发电衰减指数相结合来调整晴朗天空的辐照数据。 MPVF模型包含一个基于人工神经网络的模型(从大量用遗传算法,GA优化过的ANN中选择)。这两个模型使用来自同一NWP工具的预测作为输入。 APVF和MPVF模型已应用到使用相同数据的并网光伏电站的实际案例研究中。尽管两个模型都存在很大差异,但它们取得了非常相似的结果,其预测范围涵盖了第二天的所有白天,这很好地说明了它们适用于光伏电力生产向电力市场出售的出价。

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  • 来源
    《Mathematical Problems in Engineering》 |2013年第14期|767284.1-767284.9|共9页
  • 作者单位

    Faculty of Engineering, University of Porto, Rua Dr. Roberto Frias s, 4200-465 Porto, Portugal;

    Department of Electrical Engineering, University of La Rioja, Luis de Ulloa 20, 26004 Logrono, Spain;

    Department of Electrical Engineering, University of Zaragoza, Maria de Luna 3, 50018 Zaragoza, Spain;

    Department of Electrical Engineering, University of La Rioja, Luis de Ulloa 20, 26004 Logrono, Spain;

    Department of Electrical Engineering, University of La Rioja, Luis de Ulloa 20, 26004 Logrono, Spain;

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