通过数据科学方法推进水泥基材料设计

Q2 Engineering
Renee T. Rios, Christopher M. Childs, Scott H. Smith, N. Washburn, K. Kurtis
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引用次数: 5

摘要

混凝土施工的大规模限制了原材料的供给,既要求普遍丰富,又要求经济高效的加工。虽然在过去的几十年里,通过传统的研究范式已经实现了从更高效的水泥和混凝土生产到延长使用寿命的重大改进,但现在必须进行非增量创新,以满足日益紧迫的需求,因为材料的创新创造了更大的复杂性。数据科学正在彻底改变材料系统的发现速度和加速创新速度。这篇综述讨论了机器学习和其他数据分析技术,这些技术利用各种形式的变量表示来表示胶凝系统。这些技术包括以物理化学和化学信息学方法为指导的化学外加剂设计,使用材料信息学来开发工艺-结构-性能联系以量化增加的使用寿命,以及用于评估候选补充胶凝材料(SCMs)的火山灰性的变化点检测。这些潜在变量,加上通过算法和领域知识驱动的降维方法,为水泥基材料提供了强大的特征表示,并允许更准确的模型和更大的泛化能力,从而形成了一个强大的基础设施材料设计工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing cement-based materials design through data science approaches
The massive scale of concrete construction constrains the raw materials’ feedstocks that can be considered – requiring both universal abundance but also economical and energy-efficient processing. While significant improvements– from more efficient cement and concrete production to increased service life – have been realized over the past decades through traditional research paradigms, non-incremental innovations are necessary now to meet increasingly urgent needs, at a time when innovations in materials create even greater complexity. Data science is revolutionizing the rate of discovery and accelerating the rate of innovation for material systems. This review addresses machine learning and other data analytical techniques which utilize various forms of variable representation for cementitious systems. These techniques include those guided by physicochemical and cheminformatics approaches to chemical admixture design, use of materials informatics to develop process-structure-property linkages for quantifying increased service life, and change-point detection for assessing pozzolanicity in candidate supplementary cementitious materials (SCMs). These latent variables, coupled with approaches to dimensionality reduction driven both algorithmically as well as through domain knowledge, provide robust feature representation for cement-based materials and allow for more accurate models and greater generalization capability, resulting in a powerful design tool for infrastructure materials.
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来源期刊
RILEM Technical Letters
RILEM Technical Letters Materials Science-Materials Science (all)
CiteScore
5.00
自引率
0.00%
发文量
13
审稿时长
10 weeks
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