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首页> 外文期刊>Neural Network World >A COMPARATIVE APPROACH OF NEURAL NETWORK AND REGRESSION ANALYSIS IN VERY SHORT-TERM WIND SPEED PREDICTION
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A COMPARATIVE APPROACH OF NEURAL NETWORK AND REGRESSION ANALYSIS IN VERY SHORT-TERM WIND SPEED PREDICTION

机译:短期风预报的神经网络和回归分析的比较方法

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摘要

The accurate estimation of very short-term wind speed is essential for planning, management, and distribution of wind power produced by any installed wind turbine at a power plant. This study is based on very short-term wind characteristics and meteorological data measured from the wind farm at Bogdanci, in the Former Yugoslav Republic of Macedonia (FYROM) in between May-September 2015. Moreover, the study focuses on the comparative analysis of conventional polynomial based regression analysis and artificial neural network (ANN) methods for very short-term wind speed prediction at the interval of 10 min using four types of wind directions, and three atmospheric parameters. Polynomial regression analysis results in the maximum accuracy (R-2 = 0.71) in the prediction of wind speed rotation mean (WSRM) using the wind direction base mean (WDBM) and temperature. The ANN method achieves the best efficiency (R-2 = 0.97) in the prediction of WSRM using four types of wind directions and three atmospheric parameters. The ANN performs better than the conventional regression analysis in the prediction of each of the target wind speeds.
机译:准确估计非常短期的风速对于规划,管理和分配电厂中任何已安装的风力涡轮机产生的风力至关重要。本研究基于前南斯拉夫的马其顿共和国(FYROM)Bogdanci的风电场在2015年5月至9月之间测得的非常短期的风特征和气象数据。此外,该研究还侧重于对常规风场的比较分析。基于多项式的回归分析和人工神经网络(ANN)方法,使用四种类型的风向和三个大气参数在10分钟的间隔内进行非常短期的风速预测。多项式回归分析得出使用风向基准均值(WDBM)和温度来预测风速旋转均值(WSRM)的最大精度(R-2 = 0.71)。 ANN方法使用四种类型的风向和三个大气参数在WSRM预测中获得最佳效率(R-2 = 0.97)。在预测每个目标风速时,人工神经网络的性能优于传统回归分析。

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