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Reduced-order modeling using Dynamic Mode Decomposition and Least Angle Regression

机译:使用动态模式分解和最小角度回归的降阶建模

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Dynamic Mode Decomposition (DMD) yields a linear, approximate model of a system's dynamics that is built from data. We seek to reduce the order of this model by identifying a reduced set of modes that best fit the output. We adopt a model selection algorithm from statistics and machine learning known as Least Angle Regression (LARS). We modify LARS to be complex-valued and utilize LARS to select DMD modes. We refer to the resulting algorithm as Least Angle Regression for Dynamic Mode Decomposition (LARS4DMD). Sparsity-Promoting Dynamic Mode Decomposition (DMDSP), a popular mode-selection algorithm, serves as a benchmark for comparison. Numerical results from a Poiseuille flow test problem show that LARS4DMD yields reduced-order models that have comparable performance to DMDSP. LARS4DMD has the added benefit that the regularization weighting parameter required for DMDSP is not needed.
机译:动态模式分解(DMD)可以根据数据生成系统动力学的线性近似模型。我们试图通过确定最适合输出的简化模式集来减少该模型的顺序。我们采用来自统计和机器学习的模型选择算法,称为最小角度回归(LARS)。我们将LARS修改为复数值,并利用LARS选择DMD模式。我们将所得算法称为动态模式分解的最小角度回归(LARS4DMD)。稀疏促进动态模式分解(DMDSP)是一种流行的模式选择算法,可以作为比较的基准。 Poiseuille流量测试问题的数值结果表明,LARS4DMD产生的降阶模型的性能可与DMDSP媲美。 LARS4DMD的附加好处是不需要DMDSP所需的正则化加权参数。

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