2015
DOI: 10.1115/1.4029768
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A Machine Learning-Based Design Representation Method for Designing Heterogeneous Microstructures

Abstract: In designing microstructural materials systems, one of the key research questions is how to represent the microstructural design space quantitatively using a descriptor set that is sufficient yet small enough to be tractable. Existing approaches describe complex microstructures either using a small set of descriptors that lack sufficient level of details, or using generic high order microstructure functions of infinite dimensionality without explicit physical meanings. We propose a new machine learning-based m… Show more

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Cited by 123 publications
(51 citation statements)
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“…Homogenization function h C . The analytical form of homogenization function h C is derived based on the interfacial equilibrium conditions 7) and the kinematic constraints…”
Section: )mentioning
confidence: 99%
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“…Homogenization function h C . The analytical form of homogenization function h C is derived based on the interfacial equilibrium conditions 7) and the kinematic constraints…”
Section: )mentioning
confidence: 99%
“…In aerospace and automotive industries, carbon fiber reinforced polymer (CFRP) composites have become attractive alternatives of metal materials due to their high strength/weight ratio induced by the interplay between carbon fibers and epoxy matrix [2,3,4]. Another typical example of heterogeneous materials is the particlereinforced rubber composite where nanoparticles are added into the matrix to manipulate the overall mechanical properties, such as stiffness and viscoelastic behaviors [5,6,7,8]. Moreover, in metal additive manufacturing, the performance of the final product is strongly affected by the microscopic polycrystalline microstructure, which could be controlled by the deposition and cooling processes [9,10].…”
Section: Introductionmentioning
confidence: 99%
“…Ma et al [70] presented a machine learning framework to classify and predict fluid flow properties of stochastically reconstructed rocks, studying the relationships with geometry, topology and statistical correlation functions. Xu et al [71] predict the damping parameters of polymer nanocomposites, using correlation functions, particle shape descriptors and pore size descriptors. Feature selection for materials science has been explored by Ghiringhelli et al [72].…”
Section: A Proposed Frameworkmentioning
confidence: 99%
“…A classic example is the characterization of phase volume fraction in two-phase systems. Recent progress has focused on quantifying the phase morphology of fully segmented two-phase systems using higher order point statistics [2]; moment invariant shape descriptors [23,24]; and, more recently, sets of shape descriptors and shape correlation functions that are tailored to particular microstructure systems through a machine learning approach [22].…”
Section: Introductionmentioning
confidence: 99%
“…Likewise, although npoint correlation functions are theoretically able to exactly represent a microstructure, in practice the computational cost increases exponentially with each additional pixel state; performing even 2-point correlation analysis on images with 256 grayscale values is prohibitive. Therefore, these methods are typically applied only to a pre-selected set of micrographs, chosen by a human expert [2,3,6,25,26,22].…”
Section: Introductionmentioning
confidence: 99%