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Impact of bias correction of regional climate model boundary conditions on the simulation of precipitation extremes

机译:区域气候模型边界条件偏差对降水极端模拟的影响

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摘要

An accurate description of changes in extreme rainfall events requires high resolution simulations. Regional climate models (RCMs), where GCM data are used to provide input boundary conditions, are widely used as a way to resolve finer spatial scale phenomena. A problem with this, however, is that the inherent systematic biases within the GCM simulation are transferred to the RCM through the model boundaries. In this work we focus on the impact of bias correction of lateral and lower boundary conditions on simulated extreme rainfall events. Here three bias correction approaches are investigated. In increasing order of complexity, these are corrections for the mean, mean and variance, and the nested bias correction (NBC) approach that also corrects for lag-1 autocorrelations at nested timescales. These corrections are implemented on six-hourly GCM data taken from the GCM simulations which are used to drive the RCM along the RCM lateral boundaries. To evaluate the performance of bias correction on simulation of extreme rainfall events, daily precipitation extremes indices from the World Meteorological Organization (WMO) Expert Team on Climate Risk and Sectoral Climate Indicators (ET-CRSCI) are used. The results show that bias correction on the boundary conditions produce the results in significant improvement in extremes indices. It is clear that sea surface temperature (SST) plays an important role in driving the simulation. The results indicate that within the domain (far from boundaries) the errors in precipitation extremes are strongly dependent on the RCM, with a smaller effect coming from changes in the lateral boundary conditions.
机译:精确描述极端降雨事件的变化需要高分辨率模拟。区域气候模型(RCMS),用于提供输入边界条件的GCM数据,广泛用作解决更精细的空间尺度现象的方法。然而,这是一个问题,即GCM模拟中的固有系统偏差通过模型边界传送到RCM。在这项工作中,我们专注于横向和较低边界条件对模拟极端降雨事件的影响。这里调查了三种偏置校正方法。在增加复杂性的顺序中,这些是对平均值,均值和方差的校正以及嵌套偏差校正(NBC)方法,也可以在嵌套时间尺寸下纠正LAG-1自相关。这些校正在从GCM模拟中获取的六小时GCM数据实现,该数据用于沿RCM横向边界驱动RCM。为了评估偏差校正对极端降雨事件的模拟,使用来自世界气象组织(WMO)关于气候风险和部门气候指标(ET-CRSCI)的每日降水极端指数。结果表明,边界条件上的偏差校正产生了极端指数的显着改进的结果。很明显,海表面温度(SST)在驱动模拟方面发挥着重要作用。结果表明,在域内(远离边界),降低极端的误差强烈依赖于RCM,具有较小的效果来自横向边界条件的变化。

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