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  4. Towards a gradient flow for microstructure
 
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2017
Journal Article
Title

Towards a gradient flow for microstructure

Abstract
A central problem of microstructure is to develop technologies capable of producing an arrangement, or ordering, of a polycrystalline material, in terms of mesoscopic parameters, like geometry and crystallography, appropriate for a given application. Is there such an order in the first place? Our goal is to describe the emergence of the grain boundary character distribution (GBCD), a statistic that details texture evolution discovered recently, and to illustrate why it should be considered a material property. For the GBCD statistic, we have developed a theory that relies on mass transport and entropy. The focus of this paper is its identification as a gradient flow in the sense of De Giorgi, as illustrated by Ambrosio, Gigli, and Savare´. In this way, the empirical texture statistic is revealed as a solution of a Fokker-Planck type equation whose evolution is determined by weak topology kinetics and whose limit behavior is a Boltzmann distribution. The identification as a gradient flow by our method is tantamount to exhibiting the harvested statistic as the iterates in a JKO implicit scheme. This requires several new ideas. The development exposes the question of how to understand the circumstances under which a harvested empirical statistic is a property of the underlying process.
Author(s)
Bardsley, Patrick
Univ. of Texas
Barmak, Katayun
Columbia University, NY
Eggeling, Eva
Fraunhofer Austria / TU Graz CGV
Epshteyn, Yekaterina
Univ. of Utah
Kinderlehrer, David
Carnegie Mellon Univ.
Ta'asan, Shlomo
Carnegie Mellon Univ.
Journal
Rendiconti lincei  
DOI
10.4171/RLM/785
Language
English
Fraunhofer AUSTRIA  
Keyword(s)
  • coarsening

  • texture

  • large metastable network

  • critical event model

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