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Mining structure-property relationships in polymer nanocomposites using data driven finite element analysis and multi-task convolutional neural networks

机译:矿业在聚合物组织性能的关系使用数据驱动的有限元纳米复合材料分析和多任务卷积神经网络

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摘要

Data-driven methods have attracted increasingly more attention in materials research since the advent of he material genome initiative. The combination of materials science with computer science, statistics, and data-driven methods aims to expediate materials research and applications and can utilize both new and archived research data. In this paper, we present a data driven and deep learning approach that builds a portion of the structure-property relationship for polymer nanocomposites. Analysis of archived experimental data motivates development of a computational model which allows demonstration of the approach and gives flexibility to sufficiently explore a wide range of structures. Taking advantage of microstructure reconstruction methods and finite element simulations, we first explore qualitative elationships between microstructure descriptors and mechanical properties, resulting in new findings egarding the interplay of interphase, volume fraction and dispersion. Then we present a novel deep earning approach that combines convolutional neural networks with multi-task learning for building quantitative correlations between microstructures and property values. The performance of the model is compared with other state-of-the-art strategies including two-point statistics and structure descriptor-based approaches. Lastly, the interpretation of the deep learning model is investigated to show that the model is able to capture physical understandings while learning.
机译:吸引了越来越多的数据驱动的方法更多的关注在材料研究他出现材料基因组计划。材料科学与计算机的结合科学、统计和数据驱动方法的目标使加速材料的研究和应用并且可以利用两个新的归档研究数据。深度学习方法构建的一部分聚合物的组织性能之间的关系纳米复合材料。数据激励计算的发展模型允许示范的方法并提供灵活性,充分探索广泛的结构。微观结构重建方法和有限的元素模拟,我们首先探讨定性微观结构之间的关系描述符和机械性能,导致新的发现egarding相间的相互作用,体积分数和分散。小说深刻的赚钱方法相结合卷积神经网络和多任务学习建立定量的相关性微观结构和属性值之间的关系。与其他相比的性能模型最先进的策略包括两点统计和结构descriptor-based方法。研究表明,深度学习模型模型能够捕捉身体理解而学习。

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