Advancing Meteorological Forecasting: AI-based Approach to Synoptic Weather Map Analysis
As global warming increases the complexity of weather patterns; the precision of weather forecasting becomes increasingly important. Our study proposes a novel preprocessing method and convolutional autoencoder model developed to improve the interpretation of synoptic weather maps. These are critica...
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Zusammenfassung: | As global warming increases the complexity of weather patterns; the precision
of weather forecasting becomes increasingly important. Our study proposes a
novel preprocessing method and convolutional autoencoder model developed to
improve the interpretation of synoptic weather maps. These are critical for
meteorologists seeking a thorough understanding of weather conditions. This
model could recognize historical synoptic weather maps that nearly match
current atmospheric conditions, marking a significant step forward in modern
technology in meteorological forecasting. This comprises unsupervised learning
models like VQ-VQE, as well as supervised learning models like VGG16, VGG19,
Xception, InceptionV3, and ResNet50 trained on the ImageNet dataset, as well as
research into newer models like EfficientNet and ConvNeXt. Our findings proved
that, while these models perform well in various settings, their ability to
identify comparable synoptic weather maps has certain limits. Our research,
motivated by the primary goal of significantly increasing meteorologists'
efficiency in labor-intensive tasks, discovered that cosine similarity is the
most effective metric, as determined by a combination of quantitative and
qualitative assessments to accurately identify relevant historical weather
patterns. This study broadens our understanding by shifting the emphasis from
numerical precision to practical application, ensuring that our model is
effective in theory practical, and accessible in the complex and dynamic field
of meteorology. |
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DOI: | 10.48550/arxiv.2411.05384 |