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Feature engineering and symbolic regression methods for detecting hidden physics from sparse sensor observation data

机译:特征工程和符号回归方法,用于检测稀疏传感器观察数据的隐藏物理

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摘要

We put forth a modular approach for distilling hidden flow physics from discrete and sparse observations. To address functional expressiblity, a key limitation of the black-box machine learning methods, we have exploited the use of symbolic regression as a principle for identifying relations and operators that are related to the underlying processes. This approach combines evolutionary computation with feature engineering to provide a tool for discovering hidden parameterizations embedded in the trajectory of fluid flows in the Eulerian frame of reference. Our approach in this study mainly involves gene expression programming (GEP) and sequential threshold ridge regression (STRidge) algorithms. We demonstrate our results in three different applications: (i) equation discovery, (ii) truncation error analysis, and (iii) hidden physics discovery, for which we include both predicting unknown source terms from a set of sparse observations and discovering subgrid scale closure models. We illustrate that both GEP and STRidge algorithms are able to distill the Smagorinsky model from an array of tailored features in solving the Kraichnan turbulence problem. Our results demonstrate the huge potential of these techniques in complex physics problems, and reveal the importance of feature selection and feature engineering in model discovery approaches. Published under license by AIP Publishing.
机译:我们提出了一种模块化方法,用于从离散和稀疏观察中蒸馏隐藏的流物理。为了解决功能性的表达性,对黑盒机学习方法的一个关键限制,我们利用符号回归作为识别与底层流程相关的关系和运算符的原则。这种方法将进化计算与特征工程结合起来,提供一种用于发现嵌入在欧拉级参考框架中的流体流程轨迹中的隐藏参数化的工具。我们在本研究中的方法主要涉及基因表达编程(GEP)和顺序阈值脊回归(桥条)算法。我们展示了我们在三种不同的应用中的结果:(i)公式发现,(ii)截断误差分析,(iii)隐藏物理发现,我们包括从一组稀疏观察和发现子级缩放闭合来预测未知源术语。楷模。我们说明了GEP和阶段算法能够从求解克莱希南湍流问题的一系列量身定制的特征中蒸馏Smagorinsky模型。我们的结果展示了这些技术在复杂物理问题中的巨大潜力,并揭示了在模型发现方法中的特征选择和特征工程的重要性。通过AIP发布在许可证下发布。

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    《Physics of fluids》 |2020年第1期|共28页
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  • 正文语种 eng
  • 中图分类 流体力学;
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