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首页> 外文期刊>Journal of water and climate change >Irrigation demand modelling using the UKCP09 weather generator: lessons learned
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Irrigation demand modelling using the UKCP09 weather generator: lessons learned

机译:使用UKCP09天气发生器进行灌溉需求建模:经验教训

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The determination of irrigation demand is typically based on crop modelling using a long historic record of local daily weather data. However, there are rarely adequate weather station records near to given sites; often any local records cover a limited number of years, are incomplete, costly or are of poor quality. This paper examines whether version 1 of the UKCP09 weather generator can provide a simpler and effective method of calculating irrigation demand with sufficient accuracy for regulatory and design purposes. The irrigation demands at seven sites distributed around England were modelled using the UKCP09 baseline climatology and compared with results modelled using daily observed weather records. For the design dry year used for irrigation planning, the weather generator replicated the observed conditions with reasonable accuracy. The weather generator was however less successful at replicating extreme dry years. These results are encouraging but also provide a note of caution for the use of these generated datasets for studying current irrigation demand and by implication for modelling future needs under climate change. The study also demonstrated a simple sub-sampling approach for reducing the processing demands if using the dataset in more complex models, though this would not remove any underlying error.
机译:灌溉需求的确定通常基于使用本地每日天气数据的悠久历史记录进行的作物建模。但是,在给定地点附近很少有足够的气象站记录;通常,任何本地记录都覆盖有限的几年,不完整,昂贵或质量低劣。本文研究了UKCP09天气生成器的版本1是否可以提供一种更简便有效的方法,以足够的精度来计算灌溉需求,以满足监管和设计目的。使用UKCP09基准气候模拟了英格兰分布的七个地点的灌溉需求,并将其与使用每日观察到的气象记录模拟的结果进行了比较。对于用于灌溉计划的设计干旱年份,天气生成器以合理的精度复制了观测到的条件。然而,天气发生器在复制极端干旱年份方面不太成功。这些结果令人鼓舞,但也为使用这些生成的数据集研究当前的灌溉需求以及暗示对气候变化下的未来需求进行建模提供了警告。这项研究还展示了一种简单的子采样方法,如果在更复杂的模型中使用数据集,则可以减少处理需求,尽管这不会消除任何潜在的误差。

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