Enhancing property prediction and process optimization in building materials through machine learning: A review

被引:60
|
作者
Stergiou, Konstantinos [1 ]
Ntakolia, Charis [2 ]
Varytis, Paris [3 ]
Koumoulos, Elias [3 ]
Karlsson, Patrik [1 ]
Moustakidis, Serafeim [1 ]
机构
[1] AIDEAS OU, Narva mnt 5, EE-10117 Tallinn, Estonia
[2] Hellen AF Acad, Dept Aeronaut Studies, Sect Mat Engn Machining Technol & Prod Management, GR-1010 Athens, Greece
[3] IRES Innovat Res & Engn Solut, Rue Koningin Astridlaan 59B, B-1780 Wemmel, Belgium
基金
欧盟地平线“2020”;
关键词
Machine Learning; Optimization; Evolutionary algorithms; Materials Science; Materials properties; Materials production process; Mechanical properties; Physical properties; Optical parameters; NEURAL-NETWORKS; MECHANICAL-PROPERTIES; COMPRESSIVE STRENGTH; MATERIALS DISCOVERY; DESIGN; SYSTEM; SIMULATIONS; CONCRETE; FIBER; PANEL;
D O I
10.1016/j.commatsci.2023.112031
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Analysis and design, as the most critical components in material science, require a highly rigorous approach to assure long-term success. Due to a recent increase in the amount of available experimental data, large databases now contain a depth of knowledge on important properties of materials. The use of this information, combined with Machine Learning (ML) solutions, can enhance the materials' manufacturing process and efficiency. Indeed, ML can predict material properties, minimize the time and cost of laboratory testing, as well as optimize critical manufacturing processes. This paper aims to give an up-to-date review of the literature on how ML models are used to predict buildings' material properties (thermal, mechanical, and optical) and optimize the production lines for: a) Phase Change Materials (PCMs), b) Thermoelectric generators (TEGs), c) Customizable 3D-components, d) Advanced cement/concrete-based materials, e) Aerogels, f) Insulation components made from waste materials, g) Multifunctional component materials (MCs), h) Solar active building envelopes (SAE), i) Omniphobic coatings. The review showed that ML-driven approaches for materials' properties prediction in buildings and process optimization have grown rapidly, providing information and insights that can be utilized in the industry to maximize the materials' production and efficiency while reducing CO2 emissions, resulting in a more productive and environmentally friendly era.
引用
收藏
页数:15
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