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Multi-step-ahead Method for Wind Speed Prediction Correction Based on Numerical Weather Prediction and Historical Measurement Data

机译:基于数值天气预报和历史测量数据的风速预测校正的多阶梯度方法

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摘要

Increasing the accuracy of wind speed prediction lays solid foundation to the reliability of wind power forecasting. Most traditional correction methods for wind speed prediction establish the mapping relationship between wind speed of the numerical weather prediction (NWP) and the historical measurement data (HMD) at the corresponding time slot, which is free of time-dependent impacts of wind speed time series. In this paper, a multi-step-ahead wind speed prediction correction method is proposed with consideration of the passing effects from wind speed at the previous time slot. To this end, the proposed method employs both NWP and HMD as model inputs and the training labels. First, the probabilistic analysis of the NWP deviation for different wind speed bins is calculated to illustrate the inadequacy of the traditional time-independent mapping strategy. Then, support vector machine (SVM) is utilized as example to implement the proposed mapping strategy and to establish the correction model for all the wind speed bins. One Chinese wind farm in northern part of China is taken as example to validate the proposed method. Three benchmark methods of wind speed prediction are used to compare the performance. The results show that the proposed model has the best performance under different time horizons.
机译:提高风速预测的准确性为风力预测的可靠性奠定了坚实的基础。最传统的风速预测校正方法在相应的时间槽上建立了数值天气预报(NWP)的风速和历史测量数据(HMD)之间的映射关系,这是无时间依赖于风速时间序列的时间依赖性影响。在本文中,提出了一种多级风速预测方法,以考虑到前一次时隙的风速的通过效应。为此,所提出的方法使用NWP和HMD作为模型输入和训练标签。首先,计算不同风速箱的NWP偏差的概率分析,以说明传统的时间间隔映射策略的不足。然后,支持向量机(SVM)用作实现所提出的映射策略并为所有风速箱建立校正模型。中国北部的一个中国风电场被认为是验证拟议的方法。三个风速预测的基准方法用于比较性能。结果表明,该模型在不同时间视野下具有最佳性能。

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