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A new approach to construct representative future forcing data for dynamic downscaling

机译:一种构建具有动态缩减的代表性未来迫使数据的新方法

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Climate downscaling using regional climate models (RCMs) has been widely used to generate local climate change information needed for climate change impact assessments and other applications. Six-hourly data from individual simulations by global climate models (GCMs) are often used as the lateral forcing for the RCMs. However, such forcing often contains both internal variations and externally-forced changes, which complicate the interpretation of the downscaled changes. Here, we describe a new approach to construct representative forcing for RCM-based climate downscaling and discuss some related issues. The new approach combines the transient weather signal from one GCM simulation with the monthly mean climate states from the multi-model ensemble mean for the present and future periods, together with a bias correction term. It ensures that the mean climate differences in the forcing data between the present and future periods represent externally-forced changes only and are representative of the multi-model ensemble mean, while changes in transient weather patterns are also considered based on one select GCM simulation. The adjustments through the monthly fields are comparable in magnitude to the bias correction term and are small compared with the variations in 6-hourly data. Any inconsistency among the independently adjusted forcing fields is likely to be small and have little impact. For quantifying the mean response to future external forcing, this approach avoids the need to perform RCM large ensemble simulations forced by different GCM outputs, which can be very expensive. It also allows changes in transient weather patterns to be included in the lateral forcing, in contrast to the Pseudo Global Warming (PGW) approach, in which only the mean climate change is considered. However, it does not address the uncertainty associated with internal variability or inter-model spreads. The simulated transient weather changes may also be unrepresentative of other models. This new approach has been applied to construct the forcing data for the second phase of the WRF-based downscaling over much of North America with 4 km grid spacing.
机译:利用区域气候模型(RCMS)的气候俯卧位已被广泛用于产生气候变化影响评估和其他应用所需的本地气候变化信息。通过全球气候模型(GCMS)各自模拟的六小时数据通常用作RCMS的横向强制迫使。然而,这种强迫通常包含内部变化和外部强制变化,这使得对缩减变化的解释复杂化。在这里,我们描述了构建基于RCM的气候缩小的代表强迫的新方法,并讨论了一些相关问题。新方法将瞬态天气信号与一个GCM模拟相结合,每月平均气候状态来自来自多模型集合的意味着当前和未来时期,以及偏置校正项。它确保了当前和未来时期之间强制数据的平均气候差异仅代表外部强制变化,并且代表多模型集合均值,而瞬态天气模式的变化也是基于一个选择GCM仿真来考虑的。通过每月字段的调整与偏置校正项的幅度相当,与6小时数据的变化相比,较小。独立调整的强迫领域之间的任何不一致都可能很小,并且影响很小。为了量化对未来外部强制的平均反应,这种方法避免了使用不同GCM输出强制执行RCM大型集合模拟的需要,这可能非常昂贵。它还允许瞬态天气模式的变化包括在横向强制中,与伪全球变暖(PGW)方法相比,仅考虑平均气候变化。但是,它没有解决与内部变异性或模型间差的不确定性。模拟的瞬态天气变化也可能是不成绩的其他模型。已应用这种新方法来构建基于WRF的第二阶段的迫使数据,以4公里的网格间距在北美的大部分时间内。

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