Microstructural Degeneracy associated with a Two-Point Correlation Function and its Information Content
Cedric J. Gommes, Yang Jiao, Salvatore Torquato

TL;DR
This paper investigates the degeneracy of microstructures with identical two-point correlation functions, introduces an analytical energy landscape approach, and relates the degeneracy to the information content of the correlation function.
Contribution
It provides a comprehensive analysis of microstructural degeneracy, introduces a new energy profile metric, and offers a formula to compute the information content of correlation functions.
Findings
Energy landscape roughness correlates with ground-state degeneracy.
The information content of correlation functions predicts reconstruction accuracy.
Results apply broadly to fields using correlation functions.
Abstract
Two-point correlation functions provide crucial yet incomplete characterization of microstructures because different microstructures may have the same correlation function. In an earlier Letter [Phys. Rev. Lett. 108, 080601 (2012)], we addressed the degeneracy question: What is the number of microstructures compatible with a specified correlation function? We computed this degeneracy, i.e., configurational entropy, in the framework of reconstruction methods, which enabled us to map the problem to the determination of ground-state degeneracies. Here, we provide a more comprehensive presentation and additional results. Since the configuration space of a reconstruction problem is a hypercube on which a Hamming distance is defined, we can calculate analytically an energy profile corresponding to the average energy of all microstructures at a given Hamming distance from a ground state. The…
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Taxonomy
TopicsMachine Learning in Materials Science · nanoparticles nucleation surface interactions · Phase Equilibria and Thermodynamics
