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Bias correction methods for regional climate model simulations considering the distributional parametric uncertainty underlying the observations

机译:考虑观测值基础分布参数不确定性的区域气候模型模拟偏差校正方法

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摘要

In this paper, we present a comparative study of bias correction methods for regional climate model simulations considering the distributional parametric uncertainty underlying the observations/models. In traditional bias correction schemes, the statistics of the simulated model outputs are adjusted to those of the observation data. However, the model output and the observation data are only one case (i.e., realization) out of many possibilities, rather than being sampled from the entire population of a certain distribution due to internal climate variability. This issue has not been considered in the bias correction schemes of the existing climate change studies. Here, three approaches are employed to explore this issue, with the intention of providing a practical tool for bias correction of daily rainfall for use in hydrologic models ((1) conventional method, (2) non-informative Bayesian method, and (3) informative Bayesian method using a Weather Generator (WG) data). The results show some plausible uncertainty ranges of precipitation after correcting for the bias of RCM precipitation. The informative Bayesian approach shows a narrower uncertainty range by approximately 25–45% than the non-informative Bayesian method after bias correction for the baseline period. This indicates that the prior distribution derived from WG may assist in reducing the uncertainty associated with parameters. The implications of our results are of great importance in hydrological impact assessments of climate change because they are related to actions for mitigation and adaptation to climate change. Since this is a proof of concept study that mainly illustrates the logic of the analysis for uncertainty-based bias correction, future research exploring the impacts of uncertainty on climate impact assessments and how to utilize uncertainty while planning mitigation and adaptation strategies is still needed.
机译:在本文中,我们提出了一种针对区域气候模型模拟的偏差校正方法的比较研究,其中考虑了基于观测/模型的分布参数不确定性。在传统的偏差校正方案中,将模拟模型输出的统计信息调整为观测数据的统计信息。但是,模型输出和观测数据只是多种可能性中的一种情况(即实现),而不是由于内部气候多变性而从一定分布的整个种群中进行采样。现有的气候变化研究的偏差校正方案中未考虑该问题。在这里,我们采用三种方法来探讨这个问题,目的是为水文模型提供实用的每日降雨量偏差校正工具((1)常规方法,(2)非信息贝​​叶斯方法和(3)使用天气生成器(WG)数据的信息贝叶斯方法)。结果表明,校正RCM降水的偏差后,可能出现一些不确定的降水范围。信息性贝叶斯方法在基线期进行偏差校正后显示出的不确定性范围比非信息性贝叶斯方法要窄约25–45%。这表明从WG导出的先验分布可能有助于减少与参数相关的不确定性。我们的研究结果的含义在气候变化的水文影响评估中非常重要,因为它们与缓解和适应气候变化的行动有关。由于这是一个概念验证研究,主要说明了基于不确定性的偏差校正的分析逻辑,因此,仍需要探索不确定性对气候影响评估的影响以及在计划缓解和适应策略时如何利用不确定性的未来研究。

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