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基于卫星遥感案例研究的数值模型深度学习仿真框架

A Framework for Deep Learning Emulation of Numerical Models With a Case Study in Satellite Remote Sensing.

作者信息

Duffy Kate, Vandal Thomas J, Wang Weile, Nemani Ramakrishna R, Ganguly Auroop R

出版信息

IEEE Trans Neural Netw Learn Syst. 2023 Jul;34(7):3345-3356. doi: 10.1109/TNNLS.2022.3169958. Epub 2023 Jul 6.

Abstract

Numerical models based on physics represent the state of the art in Earth system modeling and comprise our best tools for generating insights and predictions. Despite rapid growth in computational power, the perceived need for higher model resolutions overwhelms the latest generation computers, reducing the ability of modelers to generate simulations for understanding parameter sensitivities and characterizing variability and uncertainty. Thus, surrogate models are often developed to capture the essential attributes of the full-blown numerical models. Recent successes of machine learning methods, especially deep learning (DL), across many disciplines offer the possibility that complex nonlinear connectionist representations may be able to capture the underlying complex structures and nonlinear processes in Earth systems. A difficult test for DL-based emulation, which refers to function approximation of numerical models, is to understand whether they can be comparable to traditional forms of surrogate models in terms of computational efficiency while simultaneously reproducing model results in a credible manner. A DL emulation that passes this test may be expected to perform even better than simple models with respect to capturing complex processes and spatiotemporal dependencies. Here, we examine, with a case study in satellite-based remote sensing, the hypothesis that DL approaches can credibly represent the simulations from a surrogate model with comparable computational efficiency. Our results are encouraging in that the DL emulation reproduces the results with acceptable accuracy and often even faster performance. We discuss the broader implications of our results in light of the pace of improvements in high-performance implementations of DL and the growing desire for higher resolution simulations in the Earth sciences.

摘要

基于物理学的数值模型代表了地球系统建模的最新技术水平,是我们获取见解和进行预测的最佳工具。尽管计算能力迅速增长,但对更高模型分辨率的明显需求使最新一代计算机不堪重负,降低了建模人员生成用于理解参数敏感性以及描述变异性和不确定性的模拟的能力。因此,人们经常开发替代模型来捕捉成熟数值模型的基本属性。机器学习方法,尤其是深度学习(DL),在许多学科中的近期成功表明,复杂的非线性连接主义表示可能能够捕捉地球系统中潜在的复杂结构和非线性过程。基于DL的仿真(即数值模型的函数逼近)面临的一个艰巨考验是,要了解它们在计算效率方面是否能与传统形式的替代模型相媲美,同时又能以可靠的方式再现模型结果。通过此测试的DL仿真有望在捕捉复杂过程和时空依赖性方面比简单模型表现得更好。在此,我们通过一个基于卫星遥感的案例研究,检验DL方法能够以可比的计算效率可靠地表示替代模型模拟结果这一假设。我们的结果令人鼓舞,因为DL仿真能够以可接受的精度再现结果,而且通常性能更快。鉴于DL高性能实现的改进速度以及地球科学领域对更高分辨率模拟的需求不断增加,我们讨论了研究结果的更广泛意义。

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