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Long-term wind resource assessment for small and medium-scale turbines using operational forecast data and measure-correlate-predict

机译:利用运行预测数据和测量相关预测对中小型涡轮机进行长期风资源评估

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摘要

Output from a state-of-the-art, 4 km resolution, operational forecast model (UK4) was investigated as a source of long-term historical reference data for wind resource assessment. The data were used to implement measure-correlate-predict (MCP) approaches at 37 sites throughout the United Kingdom (UK). The monthly and hourly linear correlation between the UK4-predicted and observed wind speeds indicates that UK4 is capable of representing the wind climate better than the nearby meteorological stations considered. Linear MCP algorithms were implemented at the same sites using reference data from UK4 and nearby meteorological stations to predict the long-term (10-year) wind resource. To obtain robust error statistics, MCP algorithms were applied using onsite measurement periods of 1-12 months initiated at 120 different starting months throughout an 11 year data record. Using linear regression MCP over 12 months, the average percentage errors in the long-term predicted mean wind speed and power density were 3.0% and 7.6% respectively, using UK4, and 2.8% and 7.9% respectively, using nearby meteorological stations. The results indicate that UK4 is highly competitive with nearby meteorological observations as an MCP reference data source. UK4 was also shown to systematically improve MCP predictions at coastal sites due to better representation of local diurnal effects.
机译:研究了最新的4 km分辨率运行预测模型(UK4)的输出作为风资源评估的长期历史参考数据的来源。数据被用于在英国(UK)的37个地点实施测量相关预测(MCP)方法。 UK4预测的风速与观测到的风速之间的每月和每小时线性相关性表明,UK4能够比所考虑的附近气象站更好地代表风气候。使用UK4和附近的气象站的参考数据在同一地点实施了线性MCP算法,以预测长期(10年)风资源。为了获得可靠的错误统计信息,在整个11年的数据记录中,使用120个不同的起始月份开始的1-12个月的现场测量周期来应用MCP算法。使用12个月的线性回归MCP,使用UK4的长期预测平均风速和功率密度的平均百分比误差分别为UK4,使用附近的气象站的分别为2.8%和7.9%。结果表明UK4与附近的气象观测作为MCP参考数据源具有很高的竞争力。由于更好地反映了当地的昼夜影响,UK4还被证明可以系统地改善沿海地区的MCP预测。

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