机器学习和微观力学作为盟友,建立水泥浆的成分-性能相关性

Tulio Honorio, Sofiane Hamadouche, A. Fau
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引用次数: 0

摘要

组分-性能相关性是理解水泥基材料行为和优化其配方的基础。基于基本材料成分的建模是建立这些相关性的可靠工具,与经常采用的实验试错方法相比,它具有更好地探索配方空间的优势。在这种情况下,机器学习(ML)和基于微力学(MB)的方法已被同时用于材料成分的性能预测。在这里,我们展示了这些技术可以成为建立成分-属性相关性的盟友。我们专注于普通硅酸盐水泥膏体弹性性能的预测,但概述的策略可以扩展到其他水泥体系。在MB估计中考虑了各种微观结构表示,包括多尺度表示和椭球体包含的表示。相比之下,机器学习预测不需要对材料微观结构进行任何先验假设。与测试数据集相比,使用ML和MB的预测产生相似的准确性(但ML在训练数据集中估计的误差方面表现得更好)。作为盟友,机器学习可以用来评估多维参数领域的知识(缺乏),微观力学为属性数据管理提供了理论背景,是弥补数据库中缺失数据的工具。
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Machine learning and micromechanics as allies to establish composition-property correlations in cement pastes
Composition-property correlations are fundamental to understand cement-based materials behavior and optimize their formulation. Modelling based on fundamental material component constitutes a reliable tool to establish these correlations with the advantage of better exploring formulation space when compared with the often adopted experimental trial-and-error approaches. In this context, Machine Learning (ML) and Micromechanics-Based (MB) methods have been concurrently used for property prediction from material composition. Here, we show that these techniques can be allies for establishing composition-property correlations. We focus on predictions of Ordinary Portland Cement pastes elastic properties, but the outlined strategy can be extended to other cement systems. Various microstructures representations are considered in MB estimates, including multiscale representations and representations with ellipsoidal inclusions. In contrast, ML predictions do not need any a priori assumption on material microstructure. Predictions using ML and MB yield similar accuracy when compared against test datasets (but ML performed much better regarding the error estimated in training datasets). Working as allies, ML can be deployed to evaluate the (lack of) knowledge over the multi-dimensional parametric domains, and micromechanics provides a theoretical background for property data curation and is a tool to make up for missing data in databases.
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