期刊文献+

自动观测和人工观测风的差异及其订正的初步研究 被引量:3

Pilot Study on the Differences Between Automatic-observed and Manual-observed Wind Speed and Its Correcting
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摘要 利用人工和自动站平行观测的风数据,对两种观测得到风资料的差异进行了对比和分析。结果表明,不同的风速等级、观测仪器以及不同区域对观测差异都有影响;针对不同的影响因子进行了相应的订正,结果显示,按照不同风速等级进行订正的效果最好。 Comparing and analyzing the difference between automatic-observed and manual-observed wind speed based on the wind speed parallel observations in two methods,we found that many elements could influence the difference between automatic-observed and manual-observed wind speed,including the level of speed wind,observation instruments and geography position.According to these elements,correcting the automatic-observed wind speed respectively,founding the correcting based on the level of speed wind has the best effect and is worthy to further developed and studied.
出处 《安徽农业科学》 CAS 北大核心 2010年第15期8011-8015,共5页 Journal of Anhui Agricultural Sciences
基金 气象科学数据共享中心课题(2005DKA31700-01 GX07-01-01) 2009年度公益性行业科研专项(200906041-053)
关键词 人工观测 自动观测 风速等级 观测仪器 Manual-observation Automatic-observation Level of wind speed Observation instruments
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共引文献1189

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