有限输入数据的高精度预测:使用ffnn预测海上风力发电

Elaine Zaunseder, Larissa Müller, S. Blankenburg
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引用次数: 5

摘要

本研究提出了一种前馈神经网络(FFNN)来预测丹麦海上风电场的可再生能源发电。神经网络使用历史天气和发电数据进行训练,并将学习到的模式应用于预测风能产量。此外,研究还展示了如何利用特定的参数来提高预测质量。特别对与生产现场相关的气象站的距离和方向的影响进行了详细的研究。此外,我们还检查了网络的各种参数,以提高准确性。所提出的模型与其他模型的区别在于,仅使用有限规模的训练数据集就可以达到90%以上的最佳验证精度,这里是两个月的数据,每小时分辨率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Accuracy Forecasting with Limited Input Data: Using FFNNs to Predict Offshore Wind Power Generation
This study proposes a Feed Forward Neural Net (FFNN) to forecast renewable energy generation of marine wind parks located in Denmark. The neural network uses historical weather and power generation data for training and applies the learned pattern to forecast wind energy production. Furthermore, the study shows how to improve prediction quality by leveraging specific parameters. Especially, we study the impact of the distance and direction of the weather station related to the production site in detail. In addition, we examined various parameters of the network to improve the accuracy. The proposed model distinguishes itself from other models by the fact that the optimal validation accuracy of more than 90 percent can be reached with training data sets of only a limited size, here two months of data with hourly resolution.
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