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Application of Deep Convolutional Neural Networks for Detecting Extreme Weather in Climate Datasets

机译:深卷积神经网络在气候数据集中检测极端天气的应用

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Detecting extreme events in large datasets is a major challenge in climate science research. Current algorithms for extreme event detection are build upon human expertise in defining events based on subjective thresholds of relevant physical variables. Often, multiple competing methods produce vastly different results on the same dataset. Accurate characterization of extreme events in climate simulations and observational data archives is critical for understanding the trends and potential impacts of such events in a climate change content. This study presents an application of Deep Learning techniques as alternative methodology for climate extreme events detection. Deep neural networks are able to learn high-level representations of a broad class of patterns from labeled data. In this work, we developed deep Convolutional Neural Network (CNN) classification system and demonstrated the usefulness of Deep Learning technique for tackling climate pattern detection problems. Coupled with Bayesian based hyper-parameter optimization scheme, our deep CNN system achieves 89%-99% of accuracy in detecting extreme events (Tropical Cyclones, Atmospheric Rivers and Weather Fronts).
机译:检测大型数据集中的极端事件是气候科学研究的一项重大挑战。基于相关物理变量的主观阈值定义事件的人类专业知识,基于主观阈值,将建立当前算法。通常,多种竞争方法在同一数据集中产生众异不同的结果。准确表征气候模拟和观测数据档案中的极端事件,对理解这种事件在气候变化内容中的趋势和潜在影响至关重要。本研究提出了深度学习技术的应用作为气候极端事件检测的替代方法。深度神经网络能够学习来自标记数据的广泛模式的高级表示。在这项工作中,我们开发了深度卷积神经网络(CNN)分类系统,并展示了解决气候模式检测问题的深度学习技术的有用性。再加上贝叶斯基于的超参数优化方案,我们的深度CNN系统在检测极端事件(热带气旋,大气河流和天气前线)方面取得了89%-99%的准确性。

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