Differentiable modelling to unify machine learning and physical models for geosciences

Chaopeng Shen, Alison P. Appling, Pierre Gentine, Toshiyuki Bandai, Hoshin Gupta, Alexandre Tartakovsky, Marco Baity-Jesi, Fabrizio Fenicia, Daniel Kifer, Li Li, Xiaofeng Liu, Wei Ren, Yi Zheng, Ciaran J. Harman, Martyn Clark, Matthew Farthing, Dapeng Feng, Praveen Kumar, Doaa Aboelyazeed, Farshid Rahmani, Yalan Song, Hylke E. Beck, Tadd Bindas, Dipankar Dwivedi, Kuai Fang, Marvin Höge, Chris Rackauckas, Binayak Mohanty, Tirthankar Roy, Chonggang Xu, Kathryn Lawson
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引用次数: 9

Abstract

Process-based modelling offers interpretability and physical consistency in many domains of geosciences but struggles to leverage large datasets efficiently. Machine-learning methods, especially deep networks, have strong predictive skills yet are unable to answer specific scientific questions. In this Perspective, we explore differentiable modelling as a pathway to dissolve the perceived barrier between process-based modelling and machine learning in the geosciences and demonstrate its potential with examples from hydrological modelling. ‘Differentiable’ refers to accurately and efficiently calculating gradients with respect to model variables or parameters, enabling the discovery of high-dimensional unknown relationships. Differentiable modelling involves connecting (flexible amounts of) prior physical knowledge to neural networks, pushing the boundary of physics-informed machine learning. It offers better interpretability, generalizability, and extrapolation capabilities than purely data-driven machine learning, achieving a similar level of accuracy while requiring less training data. Additionally, the performance and efficiency of differentiable models scale well with increasing data volumes. Under data-scarce scenarios, differentiable models have outperformed machine-learning models in producing short-term dynamics and decadal-scale trends owing to the imposed physical constraints. Differentiable modelling approaches are primed to enable geoscientists to ask questions, test hypotheses, and discover unrecognized physical relationships. Future work should address computational challenges, reduce uncertainty, and verify the physical significance of outputs. Differentiable modelling is an approach that flexibly integrates the learning capability of machine learning with the interpretability of process-based models. This Perspective highlights the potential of differentiable modelling to improve the representation of processes, parameter estimation, and predictive accuracy in the geosciences.

Abstract Image

Abstract Image

可微分建模,统一机器学习和地球科学物理模型
基于过程的建模为地球科学的许多领域提供了可解释性和物理一致性,但却难以有效利用大型数据集。机器学习方法,尤其是深度网络,具有很强的预测能力,但却无法回答具体的科学问题。在本《视角》中,我们将探讨可微分建模作为一种途径,以消除地球科学中基于过程的建模与机器学习之间的障碍,并以水文建模为例展示其潜力。可微分 "是指准确有效地计算模型变量或参数的梯度,从而发现高维未知关系。可微分建模涉及将(灵活数量的)先验物理知识与神经网络相连接,从而推动物理信息机器学习的发展。与纯粹的数据驱动型机器学习相比,它具有更好的可解释性、通用性和外推能力,在需要更少训练数据的情况下实现了类似的准确性。此外,随着数据量的增加,可微分模型的性能和效率也在不断提升。在数据稀缺的情况下,由于施加了物理限制,可微分模型在生成短期动态和十年尺度趋势方面的表现优于机器学习模型。可微分建模方法可帮助地球科学家提出问题、检验假设并发现未认识到的物理关系。未来的工作应解决计算难题,减少不确定性,并验证输出结果的物理意义。可微分建模是一种将机器学习的学习能力与基于过程的模型的可解释性灵活结合的方法。本视角强调了可微分建模在改进地质科学中的过程表示、参数估计和预测准确性方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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