论文标题
用于气象应用的神经网络的评估,调整和解释
Evaluation, Tuning and Interpretation of Neural Networks for Meteorological Applications
论文作者
论文摘要
神经网络为在气象学中使用远程感知的图像打开了许多新的机会。常见应用包括图像分类,例如,确定图像是否包含热带气旋和图像翻译,例如,为仅具有被动通道的卫星模拟雷达图像。但是,关于神经网络在气象学中的使用,例如评估,调整和解释的最佳实践,还有许多关于使用神经网络的问题。本文重点介绍了神经网络开发的几种策略和实际考虑因素,这些策略和实际考虑尚未在气象界受到很多关注,例如有效的接受领域的概念,未充分利用的气象性能指标以及NN解释的方法,例如合成实验和层层相关性的传播。我们还将神经网络解释的过程视为一个整体,将其视为迭代科学家驱动的发现过程,并将其分解为研究人员可以采取的个别步骤。最后,尽管到目前为止,大多数在气象学中的神经网络解释方面的工作都集中在用于图像分类任务的网络上,但我们将重点扩展到包括用于图像翻译的网络。
Neural networks have opened up many new opportunities to utilize remotely sensed images in meteorology. Common applications include image classification, e.g., to determine whether an image contains a tropical cyclone, and image translation, e.g., to emulate radar imagery for satellites that only have passive channels. However, there are yet many open questions regarding the use of neural networks in meteorology, such as best practices for evaluation, tuning and interpretation. This article highlights several strategies and practical considerations for neural network development that have not yet received much attention in the meteorological community, such as the concept of effective receptive fields, underutilized meteorological performance measures, and methods for NN interpretation, such as synthetic experiments and layer-wise relevance propagation. We also consider the process of neural network interpretation as a whole, recognizing it as an iterative scientist-driven discovery process, and breaking it down into individual steps that researchers can take. Finally, while most work on neural network interpretation in meteorology has so far focused on networks for image classification tasks, we expand the focus to also include networks for image translation.