Solving crustal heat transfer for thermochronology using physics-informed neural networks

IF 2.7 Q2 GEOCHEMISTRY & GEOPHYSICS Geochronology Pub Date : 2024-06-12 DOI:10.5194/gchron-6-227-2024
R. Jiao, Shengze Cai, Jean Braun
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Abstract

Abstract. We present a deep-learning approach based on the physics-informed neural networks (PINNs) for estimating thermal evolution of the crust during tectonic uplift with a changing landscape. The approach approximates the temperature field of the crust with a deep neural network, which is trained by optimizing the heat advection–diffusion equation, assuming initial and boundary temperature conditions that follow a prescribed topographic history. From the trained neural network of temperature field and the prescribed velocity field, one can predict the temperature history of a given rock particle that can be used to compute the cooling ages of thermochronology. For the inverse problem, the forward model can be combined with a global optimization algorithm that minimizes the misfit between predicted and observed thermochronological data, in order to constrain unknown parameters in the rock uplift history or boundary conditions. We demonstrate the approach with solutions of one- and three-dimensional forward and inverse models of the crustal thermal evolution, which are consistent with results of the finite-element method. As an example, the three-dimensional model simulates the exhumation and post-orogenic topographic decay of the Dabie Shan, eastern China, whose post-orogenic evolution has been constrained by previous thermochronological data and models. This approach takes advantage of the computational power of machine learning algorithms, offering a valuable alternative to existing analytical and numerical methods, with great adaptability to diverse boundary conditions and easy integration with various optimization schemes.
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利用物理信息神经网络解决热年代学中的地壳传热问题
摘要我们提出了一种基于物理信息神经网络(PINNs)的深度学习方法,用于估算地貌变化的构造隆升过程中地壳的热演化。该方法利用深度神经网络逼近地壳的温度场,通过优化热平流-扩散方程来训练该网络,同时假设初始和边界温度条件遵循规定的地形历史。根据训练有素的温度场神经网络和规定的速度场,可以预测给定岩石颗粒的温度历史,用于计算热年代学的冷却年龄。对于逆问题,可以将前向模型与全局优化算法相结合,使预测数据与观测到的热时学数据之间的不匹配度最小化,从而约束岩石隆起历史或边界条件中的未知参数。我们用地壳热演化的一维和三维正演和反演模型的解法演示了这种方法,这些解法与有限元方法的结果一致。例如,三维模型模拟了中国东部大别山的掘起和成因后的地形衰变,其成因后的演化受制于以往的热时学数据和模型。这种方法利用了机器学习算法的计算能力,为现有的分析和数值方法提供了一种有价值的替代方法,对各种边界条件具有很强的适应性,并易于与各种优化方案集成。
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来源期刊
Geochronology
Geochronology Earth and Planetary Sciences-Paleontology
CiteScore
6.60
自引率
0.00%
发文量
35
审稿时长
19 weeks
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