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A HYBRID MEASURE-CORRELATE-PREDICT METHOD FOR WIND RESOURCE ASSESSMENT

机译:一种混合测量相关预测风力资源评估方法

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This paper develops a hybrid Measure-Correlate-Predict (MCP) strategy to predict the long term wind resource variations at a farm site. The hybrid MCP method uses the recorded data of multiple reference stations to estimate the long term wind condition at the target farm site. The weight of each reference station in the hybrid strategy is determined based on: (i) the distance and (ii) the elevation difference between the target farm site and each reference station. The applicability of the proposed hybrid strategy is investigated using four different MCP methods: (i) linear regression; (ii) variance ratio; (Hi) Weibull scale; and (iv) Artificial Neural Networks (ANNs). To implement this method, we use the hourly averaged wind data recorded at six stations in North Dakota between the year 2008 and 2010. The station Pillsbury is selected as the target farm site. The recorded data at the other five stations (Dazey, Galesbury, Hillsboro, Mayville and Prosper) is used as reference station data. Three sets of performance metrics are used to evaluate the hybrid MCP method. The first set of metrics analyze the statistical performance, including the mean wind speed, the wind speed variance, the root mean squared error, and the maximum absolute error. The second set of metrics evaluate the distribution of long term wind speed; to this end, the Weibull distribution and the Multivariate and Multimodal Wind Distribution (MMWD) models are adopted in this paper. The third set of metrics analyze the energy production capacity and the efficiency of the wind farm. The results illustrate that the many-to-one correlation in such a hybrid approach can provide more reliable prediction of the long term onsite wind variations, compared to one-to-one correlations.
机译:本文开发了混合测量相关预测(MCP)策略,以预测农用网站的长期风力资源变化。 Hybrid MCP方法使用多个参考站的记录数据来估计目标农场站点的长期风力条件。基于:(i)距离和(ii)目标农场站点和每个参考站之间的高度差异来确定混合策略中的每个参考站的权重。使用四种不同的MCP方法研究了所提出的混合策略的适用性:(i)线性回归; (ii)方差比; (嗨)Weibull Scale; (iv)人工神经网络(ANNS)。要实现这种方法,我们在2008年和2010年之间使用六个站点六个站记录的每小时平均风数据。该电台Pillsbury被选为目标农场网站。其他五个站(Dazey,Galesbury,Hillsboro,Mayville和Prosper)的记录数据用作参考站数据。三组性能指标用于评估混合MCP方法。第一组指标分析统计性能,包括平均风速,风速方差,根均匀误差和最大绝对误差。第二组指标评估了长期风速的分布;为此,本文采用了Weibull分布和多变量和多峰和多模式风电分布(MMWD)模型。第三组指标分析了能源生产能力和风电场的效率。结果说明,与一对一的相关性相比,这种混合方法中的多对一相关性可以提供更可靠的长期风力变化的预测。

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