快速统计物理对抗性降尺度揭示了孟加拉国在气候变暖情况下不断上升的降雨风险

Anamitra Saha, Sai Ravela
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引用次数: 0

摘要

孟加拉国是一个易受气候变化影响的国家,准确量化极端天气事件的风险对于规划有效的适应和减缓战略至关重要。将粗略的气候模型预测降尺度到更小的分辨率是改进风险和不确定性评估的关键。这项工作通过整合统计学、物理学和机器学习,开发了一种降雨降尺度的新方法,并将其应用于评估孟加拉国的极端降雨风险。我们的方法成功地捕捉到了观测到的空间模式和当前气候下与极端降雨相关的风险。它还通过快速缩减未来气候情景下的多个模型,得出了不确定性估计值。我们的分析表明,预计本世纪中期整个孟加拉国的极端降雨风险将增加,其中东北部的风险最高。100 年回归期的日最大降雨量预计每天将增加约 50 毫米。然而,使用多个气候模型也表明,预测的风险具有相当大的不确定性。
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Rapid Statistical-Physical Adversarial Downscaling Reveals Bangladesh's Rising Rainfall Risk in a Warming Climate
In Bangladesh, a nation vulnerable to climate change, accurately quantifying the risk of extreme weather events is crucial for planning effective adaptation and mitigation strategies. Downscaling coarse climate model projections to finer resolutions is key in improving risk and uncertainty assessments. This work develops a new approach to rainfall downscaling by integrating statistics, physics, and machine learning and applies it to assess Bangladesh's extreme rainfall risk. Our method successfully captures the observed spatial pattern and risks associated with extreme rainfall in the present climate. It also produces uncertainty estimates by rapidly downscaling multiple models in a future climate scenario(s). Our analysis reveals that the risk of extreme rainfall is projected to increase throughout Bangladesh mid-century, with the highest risk in the northeast. The daily maximum rainfall at a 100-year return period is expected to rise by approximately 50 mm per day. However, using multiple climate models also indicates considerable uncertainty in the projected risk.
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