Initialisation from lattice Boltzmann to multi-step Finite Difference methods: modified equations and discrete observability
Thomas Bellotti (CMAP)

TL;DR
This paper develops a modified equation framework to analyze and improve the initialisation of lattice Boltzmann schemes, linking initial data choice to solution smoothness and consistency with the target PDE.
Contribution
It introduces a modified equation analysis for lattice Boltzmann initialisation, providing guidelines for achieving smoother and more consistent numerical solutions.
Findings
Lattice Boltzmann initialisation can be analyzed via modified equations.
Matching terms in modified equations improves solution smoothness.
Reduced observability simplifies initialisation conditions.
Abstract
Latitude on the choice of initialisation is a shared feature between one-step extended state-space and multi-step methods. The paper focuses on lattice Boltzmann schemes, which can be interpreted as examples of both previous categories of numerical schemes. We propose a modified equation analysis of the initialisation schemes for lattice Boltzmann methods, determined by the choice of initial data. These modified equations provide guidelines to devise and analyze the initialisation in terms of order of consistency with respect to the target Cauchy problem and time smoothness of the numerical solution. In detail, the larger the number of matched terms between modified equations for initialisation and bulk methods, the smoother the obtained numerical solution. This is particularly manifest for numerical dissipation. Starting from the constraints to achieve time smoothness, which can…
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Taxonomy
TopicsLattice Boltzmann Simulation Studies · Advanced Adaptive Filtering Techniques · Advanced Mathematical Modeling in Engineering
