The Fractional Lam\'e-Navier Operator: Appearances, Properties and Applications
James M. Scott

TL;DR
This paper introduces a fractional version of the Lamé-Navier operator, analyzing its properties, connections to nonlocal models, and applications in continuum mechanics, including well-posedness and boundary value problems.
Contribution
It provides an explicit formulation, analysis, and applications of the fractional Lamé-Navier operator, linking it to nonlocal models and boundary value problems in mechanics.
Findings
Fractional Lamé-Navier operator is a nonlocal integro-differential operator.
The operator can be expressed via compositions of nonlocal gradient operators.
Established well-posedness for related boundary value problems.
Abstract
We introduce and analyze an explicit formulation of fractional powers of the Lam\'e-Navier system of partial differential operators. We show that this fractional Lam\'e-Navier operator is a nonlocal integro-differential operator that appears in several widely-used continuum mechanics models. We demonstrate that the fractional Lam\'e-Navier operator can be obtained using compositions of nonlocal gradient operators. Additionally, the effective form of the fractional Lam\'e-Navier operator is the same as the operator obtained as a particular choice of parameters in state-based peridynamics. We further show that the Dirichlet-to-Neumann map associated to the local classical Lam\'e-Navier system posed in a half-space coincides with the square root power of the Lam\'e-Navier operator for a particular choice of elastic coefficients. We establish basic analysis results for the fractional…
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Taxonomy
TopicsNumerical methods in engineering · Advanced Numerical Methods in Computational Mathematics · Model Reduction and Neural Networks
