海洋人工智能的偏微分方程

Jules Guillot, Guillaume Koenig, Kadi Minbashian, E. Frénod, Hélène Flourent, J. Brajard
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引用次数: 1

摘要

海表温度(SST)在分析和评估天气和生物系统的动态方面起着重要作用。它有各种各样的应用,如天气预报或沿海活动的规划。一方面,预测海温的标准物理方法使用基于纳维-斯托克斯方程的耦合海洋-大气预报系统。这些模型依赖于多种物理假设,不能最佳地利用数据中可用的信息。另一方面,尽管有大量数据的可用性,但机器学习方法的直接应用并不总是会产生具有竞争力的最新结果。另一种方法是将这两种方法结合起来:这是数据模型耦合。本文的目的是在另一个领域中使用模型。该模型基于数据模型耦合的方法来模拟和预测海温。我们首先介绍原始模型。然后,对修正后的模型进行了描述,最后给出了一些数值结果。
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Partial differential equations for oceanic artificial intelligence
The Sea Surface Temperature (SST) plays a significant role in analyzing and assessing the dynamics of weather and also biological systems. It has various applications such as weather forecasting or planning of coastal activities. On the one hand, standard physical methods for forecasting SST use coupled ocean- atmosphere prediction systems, based on the Navier-Stokes equations. These models rely on multiple physical hypotheses and do not optimally exploit the information available in the data. On the other hand, despite the availability of large amounts of data, direct applications of machine learning methods do not always lead to competitive state of the art results. Another approach is to combine these two methods: this is data-model coupling. The aim of this paper is to use a model in another domain. This model is based on a data-model coupling approach to simulate and predict SST. We first introduce the original model. Then, the modified model is described, to finish with some numerical results.
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