来自光学阵列探针的冰晶图像。使用特定和全局卷积神经网络检索 HVPS、PIP、CIP 和 2DS 的形态特定尺寸分布的兼容性

IF 3.2 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Louis Jaffeux, Jan Breiner, Pierre Coutris, Alfons Schwarzenböck
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引用次数: 0

摘要

摘要卷积网络方法被用于训练光学阵列探测器水文气象图像的分类工具。上一篇文章针对 PIP 和 2DS 开发了两个模型,并对其进行了进一步测试。本文还介绍了另外三个模型:CIP 模型、HVPS 模型和一个在数据集上训练的全局模型,该数据集包括来自所有四个仪器的所有可用数据。提供了一种从 OAP 数据中检索特定形态粒度分布的方法。在同时使用所有四个探针的情况下,对 ICE GENESIS 数据集进行了比较。这些新获得的机器学习分类工具的可靠性和一致性得到了清晰的展示。分析表明,就尺寸分布的兼容性而言,使用全局模型比使用特定模型有明显优势。所获得的形态特异性粒度分布可有效地将 OAP 数据减少到与系统识别微物理过程相关的详细程度。这项研究强调了基于机器学习算法的水文气象形态分类,提高对冰和混合相微物理的洞察力的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ice crystal images from optical array probes. Compatibility of morphology specific size distributions, retrieved with specific and global Convolutional Neural Networks for HVPS, PIP, CIP, and 2DS
Abstract. The convolutional network methodology is applied to train classification tools for hydrometeor images from optical array probes. Two models were developed in a previous article for the PIP and 2DS and are further tested. Three additional models are presented: for the CIP, HVPS, and a global model trained on a data set that includes all available data from all four instruments. A methodology to retrieve morphology-specific size distributions from the OAP data is provided. Size distributions for each morphological class, obtained with the specific or global classification models, are compared for the ICE GENESIS data set, where all four probes were used simultaneously. The reliability and coherence of these newly obtained machine learning classification tools are demonstrated clearly. The analysis shows significant advantages of using the global model over the specific ones, in terms of compatibility of the size distributions. The obtained morphology-specific size distributions effectively reduce OAP data to a level of detail pertinent to systematically identify microphysical processes. This study emphasizes the potential to improve insights in ice and mixed-phase microphysics based on hydrometeor morphological classification from machine learning algorithms.
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来源期刊
Atmospheric Measurement Techniques
Atmospheric Measurement Techniques METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
7.10
自引率
18.40%
发文量
331
审稿时长
3 months
期刊介绍: Atmospheric Measurement Techniques (AMT) is an international scientific journal dedicated to the publication and discussion of advances in remote sensing, in-situ and laboratory measurement techniques for the constituents and properties of the Earth’s atmosphere. The main subject areas comprise the development, intercomparison and validation of measurement instruments and techniques of data processing and information retrieval for gases, aerosols, and clouds. The manuscript types considered for peer-reviewed publication are research articles, review articles, and commentaries.
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