Gradient Information and Regularization for Gene Expression Programming to Develop Data-Driven Physics Closure Models

IF 2 3区 工程技术 Q3 MECHANICS
Fabian Waschkowski, Haochen Li, Abhishek Deshmukh, Temistocle Grenga, Yaomin Zhao, Heinz Pitsch, Joseph Klewicki, Richard D. Sandberg
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Abstract

Learning accurate numerical constants when developing algebraic models is a known challenge for evolutionary algorithms, such as Gene Expression Programming (GEP). This paper introduces the concept of adaptive symbols to the GEP framework by Weatheritt and Sandberg (J Comput Phys 325:22–37, 2016a) to develop advanced physics closure models. Adaptive symbols utilize gradient information to learn locally optimal numerical constants during model training, for which we investigate two types of nonlinear optimization algorithms. The second contribution of this work is implementing two regularization techniques to incentivize the development of implementable and interpretable closure models. We apply \(L_2\) regularization to ensure small magnitude numerical constants and devise a novel complexity metric that supports the development of low complexity models via custom symbol complexities and multi-objective optimization. This extended framework is employed to four use cases, namely rediscovering Sutherland’s viscosity law, developing laminar flame speed combustion models and training two types of fluid dynamics turbulence models. The model prediction accuracy and the convergence speed of training are improved significantly across all of the more and less complex use cases, respectively. The two regularization methods are essential for developing implementable closure models and we demonstrate that the developed turbulence models substantially improve simulations over state-of-the-art models.

Abstract Image

基因表达编程的梯度信息和正则化,以开发数据驱动的物理闭合模型
在开发代数模型时学习精确的数值常数是进化算法(如基因表达编程(GEP))的一个已知挑战。本文在 Weatheritt 和 Sandberg(J Comput Phys 325:22-37, 2016a)的 GEP 框架中引入了自适应符号的概念,以开发高级物理闭合模型。自适应符号在模型训练过程中利用梯度信息学习局部最优数值常数,为此我们研究了两种非线性优化算法。这项工作的第二个贡献是采用两种正则化技术来激励开发可实施和可解释的闭合模型。我们应用 \(L_2\) 正则化技术来确保小幅度的数值常数,并设计了一种新颖的复杂度指标,通过自定义符号复杂度和多目标优化来支持低复杂度模型的开发。这一扩展框架被应用于四个用例,即重新发现萨瑟兰粘度定律、开发层流火焰速度燃烧模型和训练两种流体动力学湍流模型。在所有较复杂和不太复杂的应用案例中,模型预测精度和训练收敛速度都分别得到了显著提高。这两种正则化方法对于开发可实施的闭合模型至关重要,我们证明了所开发的湍流模型比最先进的模型大大提高了模拟效果。
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来源期刊
Flow, Turbulence and Combustion
Flow, Turbulence and Combustion 工程技术-力学
CiteScore
5.70
自引率
8.30%
发文量
72
审稿时长
2 months
期刊介绍: Flow, Turbulence and Combustion provides a global forum for the publication of original and innovative research results that contribute to the solution of fundamental and applied problems encountered in single-phase, multi-phase and reacting flows, in both idealized and real systems. The scope of coverage encompasses topics in fluid dynamics, scalar transport, multi-physics interactions and flow control. From time to time the journal publishes Special or Theme Issues featuring invited articles. Contributions may report research that falls within the broad spectrum of analytical, computational and experimental methods. This includes research conducted in academia, industry and a variety of environmental and geophysical sectors. Turbulence, transition and associated phenomena are expected to play a significant role in the majority of studies reported, although non-turbulent flows, typical of those in micro-devices, would be regarded as falling within the scope covered. The emphasis is on originality, timeliness, quality and thematic fit, as exemplified by the title of the journal and the qualifications described above. Relevance to real-world problems and industrial applications are regarded as strengths.
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