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Reconstruction of Complex Materials by Integral Geometric Measures 被引量:1

Reconstruction of Complex Materials by Integral Geometric Measures
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摘要 The goal of much research in computational materials science is to quantify necessary morphological information and then to develop stochastic models which both accurately reflect the material morphology and allow one to estimate macroscopic physical properties. A novel method of characterizing the morphology of disordered systems is presented based on the evolution of a family of integral geometric measures during erosion and dilation operations. The method is used to determine the accuracy of model reconstructions of random systems. It is shown that the use of erosion/dilation operations on the original image leads to a more accurate discrimination of morphology than previous methods. The goal of much research in computational materials science is to quantify necessary morphological information and then to develop stochastic models which both accurately reflect the material morphology and allow one to estimate macroscopic physical properties. A novel method of characterizing the morphology of disordered systems is presented based on the evolution of a family of integral geometric measures during erosion and dilation operations. The method is used to determine the accuracy of model reconstructions of random systems. It is shown that the use of erosion/dilation operations on the original image leads to a more accurate discrimination of morphology than previous methods.
出处 《Journal of Materials Science & Technology》 SCIE EI CAS CSCD 2002年第2期155-158,共4页 材料科学技术(英文版)
关键词 Porous media Integral geometry Morphology EROSION DILATION Minkowski functionals RECONSTRUCTION Porous media, Integral geometry, Morphology, Erosion, Dilation, Minkowski functionals, Reconstruction
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