Numerical Weather Prediction Data Free Solar Power Forecasting with Neural Networks

Vinayak Sharma, Umit Cali, V. Hagenmeyer, R. Mikut, J. Á. G. Ordiano
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引用次数: 12

Abstract

The worldwide increase in renewable energy penetration levels has made accuracy, availability, and affordability of wind and solar energy forecasting systems an integral part of the modern power grids. The present paper describes an approach to forecasting one-day-ahead photovoltaic (PV) power generation without the use of numerical weather prediction (NWP) data. The presented approach uses a closed loop non-linear autoregressive artificial neural network (CL-NAR-ANN) model with only the historical generated PV power data as input. In case of emergency, if the communication channel with the weather provider fails, the whole forecasting system runs a risk of failing. Also, purchasing NWP data might be too expensive for smaller utilities. In such situations, NWP data free models can provide cost-effective and reasonably accurate PV power forecasts, which can act as a good backup solution. Furthermore, the model is evaluated using a dataset from the Global Energy Forecasting Competition of 2014 (GEFCom14) and its results are compared to other data-driven models such as polynomial and artificial neural network (ANN) models with and without NWP data as input. The results suggest that the CL-NAR-ANN model delivers acceptable forecasts and outperforms other NWP free models by a margin of 8% in terms of root mean square error, hence supporting the possibility of obtaining acceptable forecasts using the CL-NAR-ANN.
数值天气预报数据免费太阳能预测与神经网络
世界范围内可再生能源渗透水平的提高使得风能和太阳能预测系统的准确性、可用性和可负担性成为现代电网的一个组成部分。本文描述了一种在不使用数值天气预报(NWP)数据的情况下预测一天前光伏(PV)发电的方法。该方法采用闭环非线性自回归人工神经网络(CL-NAR-ANN)模型,仅将历史光伏发电数据作为输入。在紧急情况下,如果与气象提供商的通信通道出现故障,整个预报系统就会面临故障的风险。此外,对于小型公用事业公司来说,购买NWP数据可能过于昂贵。在这种情况下,NWP无数据模型可以提供成本效益高且合理准确的光伏功率预测,可以作为一个很好的备用解决方案。此外,使用2014年全球能源预测竞赛(GEFCom14)的数据集对模型进行了评估,并将其结果与其他数据驱动模型(如多项式和人工神经网络(ANN)模型)进行了比较,这些模型有或没有NWP数据作为输入。结果表明,cl - nn - ann模型提供了可接受的预测,并且在均方根误差方面优于其他无NWP模型8%,因此支持使用cl - nn - ann获得可接受的预测的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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