作者
Gowri Srinivasan, Jeffrey D Hyman, David A Osthus, Bryan A Moore, Daniel O’Malley, Satish Karra, Esteban Rougier, Aric A Hagberg, Abigail Hunter, Hari S Viswanathan
发表日期
2018/8/3
期刊
Scientific reports
卷号
8
期号
1
页码范围
11665
出版商
Nature Publishing Group UK
简介
Fractured systems are ubiquitous in natural and engineered applications as diverse as hydraulic fracturing, underground nuclear test detection, corrosive damage in materials and brittle failure of metals and ceramics. Microstructural information (fracture size, orientation, etc.) plays a key role in governing the dominant physics for these systems but can only be known statistically. Current models either ignore or idealize microscale information at these larger scales because we lack a framework that efficiently utilizes it in its entirety to predict macroscale behavior in brittle materials. We propose a method that integrates computational physics, machine learning and graph theory to make a paradigm shift from computationally intensive high-fidelity models to coarse-scale graphs without loss of critical structural information. We exploit the underlying discrete structure of fracture networks in systems considering flow …
引用总数
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