Moreno Soto Álvaro, Cervantes Alejandro, Soler Manuel
Department of Aerospace Engineering, Universidad Carlos III de Madrid, Leganés, Community of Madrid, 28911, Spain.
Escuela Superior de Ingeniería y Tecnología, Universidad Internacional de La Rioja, Logroño, La Rioja, 26006, Spain.
Open Res Eur. 2024 May 10;4:99. doi: 10.12688/openreseurope.17388.1. eCollection 2024.
The accurate provision of weather information holds immense significance to many disciplines. One example corresponds to the field of air traffic management, in which one basis for weather detection is set upon recordings from sparse weather stations on ground. The scarcity of data and their lack of precision poses significant challenges to achieve a detailed description of the atmosphere state at a certain moment in time.
In this article, we foster the use of physics-informed neural networks (PINNs), a type of machine learning (ML) architecture which embeds mathematically accurate physics models, to generate high-quality weather information subject to the regularization provided by the Navier-Stokes equations.
The application of PINNs is oriented to the reconstruction of dense and precise wind and pressure fields in areas where only a few local measurements provided by weather stations are available. Our model does not only disclose and regularize such data, which are potentially corrupted by noise, but is also able to precisely compute wind and pressure in target areas.
The effect of time and spatial resolution over the capability of the PINN to accurately reconstruct fluid phenomena is thoroughly discussed through a parametric study, concluding that a proper tuning of the neural network's loss function during training is of utmost importance.
准确提供天气信息对许多学科都具有重大意义。一个例子是空中交通管理领域,其中天气探测的一个依据是基于地面稀疏气象站的记录。数据的稀缺性及其缺乏精确性给在特定时刻实现对大气状态的详细描述带来了重大挑战。
在本文中,我们促进使用物理信息神经网络(PINNs),这是一种机器学习(ML)架构,它嵌入了数学上精确的物理模型,以在纳维 - 斯托克斯方程提供的正则化条件下生成高质量的天气信息。
PINNs的应用旨在重建仅由气象站提供少量局部测量数据的区域中的密集且精确的风场和压力场。我们的模型不仅能揭示并规范这些可能被噪声破坏的数据,还能够精确计算目标区域的风和压力。
通过参数研究全面讨论了时间和空间分辨率对PINN准确重建流体现象能力的影响,得出结论:在训练过程中对神经网络损失函数进行适当调整至关重要。