利用人工智能算法对北太平洋西部热带气旋中心进行地球静止卫星定位

IF 6.9 1区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Chang-Hoi Ho, Donggyu Hyeon, Minhee Chang, Greg McFarquhar, Seong-Hee Won
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引用次数: 0

摘要

摘要 开发了人工智能(AI)模型来确定北太平洋西部的热带气旋(TC)中心。这些模型综合了来自六个地球静止卫星图像通道的信息:四个红外(IR)和一个短波 IR 通道的亮度温度,以及一个可见光通道的反射率。第一个模型是为空间数据处理而设计的卷积神经网络,第二个模型是有效捕捉时空信息的卷积长短期记忆模型。为了进行训练、验证和测试,我们从日本 "向日葵8号 "卫星上获取了2016-2021年期间六个频道的空间图像。欧洲中期天气预报中心 6 小时或 12 小时预测的位置被指定为人工智能模型的初始值。与联合台风警报中心的最佳路径相比,初始值的误差为 20-50 公里,具体取决于热带气旋的强度。弱(强)热带气旋的误差较大(较小)。在自动旋转中心飓风眼检索(ARCHER)产品中也发现了这种误差依赖性,该产品目前被多个业务机构使用。当包括地球静止轨道和极地轨道卫星的观测数据时,ARCHER 的误差通常较小。如果没有极地轨道卫星的微波信道信息,误差仍然很大。这项研究成功地开发了两个人工智能模型,仅使用地球静止卫星的六信道图像就能一致地确定热气旋中心的位置。这些模型表现出与 ARCHER 产品相当甚至更好的性能。新开发的人工智能模型可用于实际操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geostationary satellite-derived positioning of a tropical cyclone center using artificial intelligence algorithms over the western North Pacific
Abstract Artificial intelligence (AI) models were developed to determine the center of tropical cyclones (TCs) in the western North Pacific. These models integrated information from six channels of geostationary satellite imagery: the brightness temperature of four infrared (IR) and one shortwave IR channels, as well as the reflectivity of one visible channel. The first model is a convolutional neural network designed for spatial data processing, and the second is a convolutional long short-term memory model that effectively captures spatiotemporal information. For training, verification, and testing purposes, spatial images from six channels were obtained from the Japanese Himawari-8 satellite from 2016–2021. The position of the European Center for Medium-range Weather Forecast 6- or 12-h prediction was assigned as an initial value to the AI models. Errors in the initial value were 20–50 km compared to the Joint Typhoon Warning Center best track, depending on TC intensity. Weak (strong) TCs exhibited large (small) errors. This error dependency was found in Automated Rotational Center Hurricane Eye Retrieval (ARCHER) product, which is currently used by several operational organizations. ARCHER errors were typically small when observations from both geostationary and polar orbiting satellites were included. Significant errors remained in the absence of microwave channel information from polar orbiting satellites. This study successfully developed two AI models that consistently determined the location of the TC center using only six-channel images from geostationary satellites. These models exhibited comparable or better performance than the ARCHER products. The newly developed AI models can potentially be implemented for operational use.
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来源期刊
CiteScore
9.80
自引率
6.20%
发文量
231
审稿时长
6-12 weeks
期刊介绍: The Bulletin of the American Meteorological Society (BAMS) is the flagship magazine of AMS and publishes articles of interest and significance for the weather, water, and climate community as well as news, editorials, and reviews for AMS members.
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