Analysis and prediction of compressive strength of calcium aluminate cement paste based on machine learning

IF 4.4 3区 工程技术 Q1 ENGINEERING, CIVIL Archives of Civil and Mechanical Engineering Pub Date : 2024-11-07 DOI:10.1007/s43452-024-01083-5
Bin Yang, Yue Li, Jiale Shen, Hui Lin
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Abstract

Calcium aluminate cement (CAC) is an important hydraulic cementitious material. It is widely used in construction, metallurgy, chemical industry and other fields due to its high early strength. The factors affecting its strength are also very complex. The research focus of this paper is to establish a prediction model for the compressive strength of CAC paste, so as to assist scientific research and practical engineering to quickly predict the strength of CAC paste at different ages under different mix ratios and curing conditions. In this paper, 273 sets of data are trained and tested based on support vector regression (SVR), random forest regression (RFR), gradient boosting (GB) and extreme gradient boosting (XGB) algorithms. It is found that the prediction accuracy of GB model can reach 89%. Meanwhile, based on the GB model, the feature importance analysis, global interpretation and dependence analysis are carried out. It is found that the main factors affecting the strength of CAC are relative humidity, silica fume content and curing temperature. To obtain high-strength CAC paste, the recommended mix ratio and curing conditions are as follows: Al2O3 content is 67%, CaO content is 32%, silica fume replacement rate is 10%, water–cement ratio is 0.1, relative humidity is 90%, curing temperature is 5 °C and low-temperature treatment time is greater than 60 days. Finally, a graphical user interface is established to facilitate direct prediction of CAC paste under new mix ratio and curing conditions.

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基于机器学习的铝酸钙水泥浆抗压强度分析与预测
铝酸钙水泥(CAC)是一种重要的水硬性胶凝材料。由于其早期强度高,被广泛应用于建筑、冶金、化工等领域。影响其强度的因素也非常复杂。本文的研究重点是建立 CAC 浆料抗压强度预测模型,以帮助科学研究和实际工程快速预测 CAC 浆料在不同配合比和养护条件下不同龄期的强度。本文基于支持向量回归(SVR)、随机森林回归(RFR)、梯度提升(GB)和极端梯度提升(XGB)算法对 273 组数据进行了训练和测试。结果发现,GB 模型的预测准确率可达 89%。同时,在 GB 模型的基础上,进行了特征重要性分析、全局解释和依赖性分析。研究发现,影响 CAC 强度的主要因素是相对湿度、硅灰含量和固化温度。为获得高强度的 CAC 浆料,推荐的混合比和固化条件如下:Al2O3 含量为 67%,CaO 含量为 32%,硅灰替代率为 10%,水灰比为 0.1,相对湿度为 90%,固化温度为 5 °C,低温处理时间大于 60 天。最后,建立了一个图形用户界面,以方便在新的混合比和固化条件下直接预测 CAC 浆料。
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来源期刊
Archives of Civil and Mechanical Engineering
Archives of Civil and Mechanical Engineering 工程技术-材料科学:综合
CiteScore
6.80
自引率
9.10%
发文量
201
审稿时长
4 months
期刊介绍: Archives of Civil and Mechanical Engineering (ACME) publishes both theoretical and experimental original research articles which explore or exploit new ideas and techniques in three main areas: structural engineering, mechanics of materials and materials science. The aim of the journal is to advance science related to structural engineering focusing on structures, machines and mechanical systems. The journal also promotes advancement in the area of mechanics of materials, by publishing most recent findings in elasticity, plasticity, rheology, fatigue and fracture mechanics. The third area the journal is concentrating on is materials science, with emphasis on metals, composites, etc., their structures and properties as well as methods of evaluation. In addition to research papers, the Editorial Board welcomes state-of-the-art reviews on specialized topics. All such articles have to be sent to the Editor-in-Chief before submission for pre-submission review process. Only articles approved by the Editor-in-Chief in pre-submission process can be submitted to the journal for further processing. Approval in pre-submission stage doesn''t guarantee acceptance for publication as all papers are subject to a regular referee procedure.
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