人工智能在材料科学和现代混凝土技术中的应用:可能性与前景分析

IF 0.5 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY Inorganic Materials: Applied Research Pub Date : 2024-10-09 DOI:10.1134/S2075113324700783
V. A. Poluektova, M. A. Poluektov
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引用次数: 0

摘要

摘要--本文分析了当前人工智能(AI)在材料科学和混凝土技术(包括建筑中的三维打印)中的应用趋势和机遇。本文强调了人工智能在预测材料特性、开发新材料和质量控制方面的关键作用。通过分析从大量研究中收集到的大量数据,人工智能可以提出最佳参数,以实现所需的材料特性,从而降低成本并提高生产效率。现有的流变模型,如宾汉姆-什韦多夫模型或赫歇尔-布克利模型,根据特定的方程和参数描述材料行为。这些模型在预测混凝土性能方面非常有用,尤其是在可以获得混凝土成分数据的情况下。然而,这些模型的预测准确性可能有限,尤其是对于非标准或新型材料。研究发现,考虑到影响材料特性的多个参数,包括化学和矿物成分以及结构特征,机器学习和神经网络有可能准确预测混凝土材料的流变和物理机械特性。实验数据与人工智能的结合可以在生产过程中成功优化成分和性能,降低成本,减少研究/测试时间,为材料科学领域的研究人员和工程师带来新的机遇。XGBoost、LightGBM、Catboost 和 NGBoost 等机器学习算法表现出很高的预测准确性,已成为混凝土成分设计和创新技术的有力工具。通过分析夏普利外加剂解释,我们可以了解混凝土混合物中哪些参数对其特性影响最大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Artificial Intelligence in Materials Science and Modern Concrete Technologies: Analysis of Possibilities and Prospects

Abstract—An analysis of current trends and opportunities for the application of artificial intelligence (AI) in materials science and concrete technology, including 3D printing in construction, is presented. The key role of AI in predicting material properties, developing new materials, and quality control is highlighted. By analyzing large volumes of data collected from numerous studies, AI can suggest optimal parameters to achieve desired material properties, thereby reducing costs and increasing production efficiency. Existing rheological models, such as the Bingham–Shvedov model or the Herschel–Bulkley model, describe material behavior based on specific equations and parameters. These models can be useful in predicting concrete properties, especially when data on its component composition is available. However, these models may be limited in their predictive accuracy, particularly for nonstandard or novel materials. It has been found that machine learning and neural networks have the potential to provide accurate predictions of rheological and physicomechanical properties of concrete materials, considering multiple parameters that influence material characteristics, including chemical and mineralogical composition, as well as structural features. The combination of experimental data and AI can successfully optimize compositions and properties during production, reducing costs and research/testing time, and opening new opportunities for researchers and engineers in the field of materials science. Machine-learning algorithms such as XGBoost, LightGBM, Catboost, and NGBoost demonstrate high predictive accuracy and have become powerful tools in the design of concrete compositions and innovative technologies. The analysis of Shapley additive explanations allows us to understand which parameters of a concrete mixture have the greatest influence on its characteristics.

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来源期刊
Inorganic Materials: Applied Research
Inorganic Materials: Applied Research Engineering-Engineering (all)
CiteScore
0.90
自引率
0.00%
发文量
199
期刊介绍: Inorganic Materials: Applied Research  contains translations of research articles devoted to applied aspects of inorganic materials. Best articles are selected from four Russian periodicals: Materialovedenie, Perspektivnye Materialy, Fizika i Khimiya Obrabotki Materialov, and Voprosy Materialovedeniya  and translated into English. The journal reports recent achievements in materials science: physical and chemical bases of materials science; effects of synergism in composite materials; computer simulations; creation of new materials (including carbon-based materials and ceramics, semiconductors, superconductors, composite materials, polymers, materials for nuclear engineering, materials for aircraft and space engineering, materials for quantum electronics, materials for electronics and optoelectronics, materials for nuclear and thermonuclear power engineering, radiation-hardened materials, materials for use in medicine, etc.); analytical techniques; structure–property relationships; nanostructures and nanotechnologies; advanced technologies; use of hydrogen in structural materials; and economic and environmental issues. The journal also considers engineering issues of materials processing with plasma, high-gradient crystallization, laser technology, and ultrasonic technology. Currently the journal does not accept direct submissions, but submissions to one of the source journals is possible.
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