On physically redundant and irrelevant features when applying Lie-group symmetry analysis to hydrodynamic stability analysis
Michael Frewer

TL;DR
This paper critically examines the use of Lie-group symmetry analysis in hydrodynamic stability, highlighting that many generated modes are physically redundant and that symmetry-induced parameters are irrelevant to the overall physical behavior.
Contribution
It demonstrates that symmetry-based spectral decompositions do not produce new physical modes or mechanisms, emphasizing the redundancy and irrelevance of symmetry-induced parameters in linear PDE solutions.
Findings
Symmetry-based modes are physically redundant to standard modes.
Symmetry-induced parameters do not affect the collective physical fields.
No new physical mechanisms are revealed by symmetry analysis.
Abstract
Every linear system of partial differential equations (PDEs) admits a scaling symmetry in its dependent variables. In conjunction with other admitted symmetries of linear type, the associated invariant solution condition poses a linear eigenvalue problem. If this problem is structured such that the spectral theorem applies, then the general solution of the considered linear PDE system is obtained by summing or integrating the invariant eigenfunctions (modes) over all eigenvalues, depending on whether the spectrum of the operator is discrete or continuous. By first studying the 1-D diffusion equation as a demonstrating example, this method is then applied to a relevant 2-D problem from hydrodynamic stability analysis. The aim of this study is to draw attention to the following two independent facts that need to be addressed in future studies when constructing solutions for linear PDEs…
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Taxonomy
TopicsNumerical methods for differential equations · Model Reduction and Neural Networks · Computational Fluid Dynamics and Aerodynamics
