Deterministic and Probabilistic Wind Power Forecasts by Considering Various Atmospheric Models and Feature Engineering Approaches

Yuan-Kang Wu, Cheng-Liang Huang, Sheng-Hong Wu, Jing-Shan Hong, Hui-Ling Chang
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引用次数: 2

Abstract

This work proposed a model and the procedures of deterministic and probabilistic forecasts, e.g., hour-ahead and day-ahead, for wind power generation. The contents of this research include numerical weather prediction, data pre-processing technique, and forecasting models using artificial intelligence methods. Regarding the inputs of the model, we had considered three kinds of NWP wind speeds, generated by the Central Weather Bureau based on three atmospheric models, namely WRFD, RWRF and WEPS, and historical wind power generation. The measured wind speeds, out of an anemometer tower, were used to compare with the NWP wind speeds to help us select the least error time combination. Regarding data pre-processing, NWP wind-speed correction based on the height of wind turbines and PCA and EMD for exacting wind-speed feature had been tested. As for the forecast model, we used artificial neural network and XGBoost to predict the generation of wind power, and a number of error indexes had been used to evaluate the performance of the forecasts. The empirical data from a wind farm in Taiwan verifies the accuracy of the proposed method. What worth mentioning, the importance of model selection, numerical weather prediction, and data pre-processing is self-evident.
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考虑各种大气模型和特征工程方法的确定性和概率风电预测
本文提出了风力发电的确定性预测和概率预测的模型和程序,如小时前和天前预测。研究内容包括数值天气预报、数据预处理技术和人工智能方法预报模型。在模式输入方面,我们考虑了中央气象局基于WRFD、RWRF和WEPS三个大气模式生成的三种NWP风速,以及历史风力发电量。风速塔测量的风速与NWP风速进行比较,以帮助我们选择误差最小的时间组合。在数据预处理方面,测试了基于风力机高度的NWP风速校正以及精确风速特征的PCA和EMD。在预测模型方面,我们使用人工神经网络和XGBoost对风电发电量进行预测,并使用了多个误差指标来评价预测的性能。台湾某风电场的实测数据验证了该方法的准确性。值得一提的是,模式选择、数值天气预报和数据预处理的重要性不言而喻。
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