人工神经网络在不同矿物添加剂水泥砂浆性能预测中的应用

IF 1.4 4区 材料科学 Q3 MATERIALS SCIENCE, CERAMICS Science of Sintering Pub Date : 2023-01-01 DOI:10.2298/sos2301011t
A. Terzic, Milada L. Pezo, L. Pezo
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引用次数: 0

摘要

用于预测和优化建筑材料性能的机器学习技术已成为当代土木工程的一个重要特征。本研究采用人工神经网络(ANN)对砂浆行为进行预测。该模型评价了17种建筑或高温砂浆的设计和特性。采用了七种不同的水泥类型。在砂浆混合物中掺入了17种原生和次生矿物添加剂。聚类分析和主成分分析根据监测的特征指定了相似的迫击炮组,并赋予它们特定的用途。ANN预见了设计砂浆的质量。对所采用的原料对砂浆质量的影响进行了评估和评价。人工神经网络输出突出了预测的高适宜性水平,即在训练期间为0.999,这被认为是适当的,足以在广泛的处理参数范围内正确预测观察到的输出。由于预测精度高,人工神经网络可以代替或与标准破坏性试验结合使用,从而节省了建筑行业的时间、资源和资金。改性水泥砂浆的良好性能是扩大经济型矿物添加剂在建筑材料中的应用,通过减少其排放来实现碳中和的积极标志。
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Application of artificial neural networks in performance prediction of cement mortars with various mineral additives
The machine learning technique for prediction and optimization of building material performances became an essential feature in the contemporary civil engineering. The Artificial Neural Network (ANN) prognosis of mortar behavior was conducted in this study. The model appraised the design and characteristics of seventeen either building or high-temperature mortars. Seven different cement types were employed. Seventeen mineral additives of primary and secondary origin were embedded in the mortar mixtures. Cluster Analysis and Principal Component Analysis designated groups of similar mortars assigning them a specific purpose based on monitored characteristics. ANN foresaw the quality of designed mortars. The impact of implemented raw materials on the mortar quality was assessed and evaluated. ANN outputs highlighted the high suitability level of anticipation, i.e., 0.999 during the training period, which is regarded appropriate enough to correctly predict the observed outputs in a wide range of processing parameters. Due to the high predictive accuracy, ANN can replace or be used in combination with standard destructive tests thereby saving the construction industry time, resources, and capital. Good performances of altered cement mortars are positive sign for widening of economical mineral additives application in building materials and making progress towards achieved carbon neutrality by reducing its emission.
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来源期刊
Science of Sintering
Science of Sintering 工程技术-材料科学:硅酸盐
CiteScore
2.50
自引率
46.70%
发文量
20
审稿时长
3.3 months
期刊介绍: Science of Sintering is a unique journal in the field of science and technology of sintering. Science of Sintering publishes papers on all aspects of theoretical and experimental studies, which can contribute to the better understanding of the behavior of powders and similar materials during consolidation processes. Emphasis is laid on those aspects of the science of materials that are concerned with the thermodynamics, kinetics and mechanism of sintering and related processes. In accordance with the significance of disperse materials for the sintering technology, papers dealing with the question of ultradisperse powders, tribochemical activation and catalysis are also published. Science of Sintering journal is published four times a year. Types of contribution: Original research papers, Review articles, Letters to Editor, Book reviews.
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