Assessing the frequency and intensity of extreme weather events, and understanding how climate change affects them, is crucial for developing effective adaptation and mitigation strategies. However, observational datasets are too short and physics-based global climate models (GCMs) are too computationally expensive to obtain robust statistics for the rarest, yet most impactful, extreme events. AI-based emulators have shown promise for predictions at weather and even climate timescales, but they struggle on extreme events with few or no examples in their training dataset. Rare event sampling (RES) algorithms have previously demonstrated success for some extreme events, but their performance depends critically on a hard-to-identify "score function", which guides efficient sampling by a GCM. Here, we develop a novel algorithm, AI+RES, which uses ensemble forecasts of an AI weather emulator as the score function to guide highly efficient resampling of the GCM and generate robust (physics-based) extreme weather statistics and associated dynamics at 30-300x lower cost. We demonstrate AI+RES on mid-latitude heatwaves, a challenging test case requiring a score function with predictive skill many days in advance. AI+RES, which synergistically integrates AI, RES, and GCMs, offers a powerful, scalable tool for studying extreme events in climate science, as well as other disciplines in science and engineering where rare events and AI emulators are active areas of research.
翻译:评估极端天气事件的频率与强度,并理解气候变化如何影响这些事件,对于制定有效的适应与减缓策略至关重要。然而,观测数据集时间跨度过短,而基于物理的全球气候模型(GCMs)计算成本过高,难以针对最罕见但影响最大的极端事件获得稳健的统计结果。基于AI的仿真器已在天气乃至气候时间尺度的预测中展现出潜力,但它们在训练数据集中样本极少或缺失的极端事件上表现不佳。罕见事件采样(RES)算法此前已在某些极端事件中取得成功,但其性能关键依赖于一个难以确定的“评分函数”,该函数通过引导GCM进行高效采样。本文提出一种新颖算法AI+RES,该算法利用AI天气仿真器的集合预报作为评分函数,以引导GCM的高效重采样,从而以降低30-300倍的成本生成稳健的(基于物理的)极端天气统计及相关动力学特征。我们以中纬度热浪为例验证AI+RES,这是一个具有挑战性的测试案例,要求评分函数具备多日提前的预测能力。AI+RES通过协同整合AI、RES和GCMs,为气候科学以及其他涉及罕见事件与AI仿真器研究的科学与工程领域,提供了一个强大且可扩展的研究工具。