对流- unet:基于风云四号高速地磁成像仪的深度卷积神经网络对流检测

Yufei Wang, Baihua Xiao
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引用次数: 0

摘要

深层对流会导致各种恶劣的天气状况,如雷暴、强风和暴雨。卫星观测提供全天候和多方位的观测,有助于及时发现此类天气系统,这对挽救生命和财产至关重要。然而,以往基于信道特征提取和阈值滤波的方法并没有充分利用卫星图像中的信息,导致在强对流检测等复杂问题上存在局限性。在这项研究中,我们提出了一种基于深度学习的对流- unet模型的新框架来检测对流。我们使用FY-4B GHI的4 ~ 7通道,我们根据对流的微物理特性选择通道作为输入,雷达反射率作为标签。结合详细的训练时间和测试时间数据增强策略,构建深度神经网络,自动提取空间上下文特征,实现端到端学习。结果表明,我们的方法在Fi-measure上的性能远远超过了以往的信道提取与阈值滤波方法(如BT和BTD)相结合的性能至少为0.24。我们还证明了我们的信道选择和数据增强策略对对流检测具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convection-UNet: A Deep Convolutional Neural Network for Convection Detection based on the Geo High-speed Imager of Fengyun-4B
Deep convection can cause a variety of severe weather conditions such as thunderstorms, strong winds, and heavy rainfall. Satellite observations provide all-weather and multi-directional observations, facilitating the timely detection of such weather systems, which is crucial to saving lives and property. However, previous methods based on channel feature extraction and threshold filtering did not make full use of information in satellite images, which led to limitations on such complex problems as strong convection detection. In this study, we propose a novel framework of a deep learning-based model Convection-UNet to detect convection. We use channel 4 to 7 of FY-4B GHI that we select according to the microphysical properties of convection as input and radar reflectivity as label. We combine the detailed training time and test time data augmentation strategies and build a deep neural network to automatically extract spatial context features and achieve end-to-end learning. Results show that the performance of our method far exceeds the previous channel extraction combined with threshold filtering methods such as BT and BTD at least 0.24 on Fi-measure. We also show that our channel selection and data augmentation strategies are of great significance to detect convection.
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