基于多个等压面气象预报资料的短期风电预测

Hai Zhou, Wen Ma, Ji Wu, Xu Cheng, Xiao Chang
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引用次数: 0

摘要

考虑到90%以上的水汽集中在对流层,而云、雾、雨等天气现象多发生在对流层中下层,提出了一种基于对流层中下层多个等压面气象资料的短期风电预测方法。针对功率精度在很大程度上取决于风速预测精度的问题,以及目前风电场风速预测存在相位滞后和系统偏差等问题,考虑风电转换模型解耦方法,首先对风速预测误差进行校正,然后建立风电转换模型。以多层气象预报数据为基础,以最大平均精度为目标函数,建立了最优特征组合优化模型。在此基础上,构建了基于Conv1D的风速校正模型。最后,通过五种波动过程分类建立风速-功率转换模型,并将修正后的风速转换为功率。实验结果表明,与使用相关系数选择特征组合或仅使用表面数据建模相比,该方法可以获得更好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term Wind Power Forecasting Based on Meteorological Forecast Data of Multiple Isobaric Surfaces
Considering that more than 90% of water vapor is concentrated in the troposphere, and many weather phenomena such as cloud, fog and rain occur in the middle and lower troposphere, a short-term wind power prediction method based on meteorological data of multiple isobaric surfaces in the middle and lower troposphere is proposed. In view of the fact that the power accuracy depends greatly on the accuracy of wind speed prediction, and the current wind speed prediction in wind farms has some problems such as phase lag and system deviation, the decoupling method of wind power conversion model is considered, which firstly corrects the wind speed prediction error and then establishes the wind power conversion model. In detail, based on the multi-layer meteorological forecast data, the optimal feature combination optimization model is established with the maximum average accuracy as the objective function. On this basis, a wind speed correction model based on Conv1D was constructed. Finally, the wind speed - power conversion model is constructed by five kinds of fluctuation process classification, and the corrected wind speed is converted into power. Experimental results show that the proposed method can obtain better accuracy than using correlation coefficients to select feature combinations or only using surface data for modeling.
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