Predicting the rheology of self-consolidating concrete under hot weather

IF 1.3 Q3 CONSTRUCTION & BUILDING TECHNOLOGY Proceedings of the Institution of Civil Engineers-Construction Materials Pub Date : 2019-09-06 DOI:10.1680/JCOMA.16.00055
Mohammed I. Al-Khatib, S. Al-Martini
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引用次数: 9

Abstract

The flow behaviour of self-consolidating concrete (SCC) incorporating several types of supplementary materials was investigated under hot weather conditions (25–40°C) and prolonged mixing (up to 110 min). Experiments were conducted outdoors during the summer of 2014 in Abu Dhabi. The slump flow and rheological properties of SCC incorporating various types of supplementary cementitious materials (SCMs) were examined under such types of harsh environmental conditions. A portable concrete rheometer (BT2) was used to measure the rheological properties of the investigated SCC mixtures. In this study, the neural network technique was employed to predict the rheological properties of SCC under hot weather conditions and prolonged mixing. The ambient temperature, mixing time and SCMs were the network input parameters. The relative viscosity, relative yield stress and slump flow were the output parameters. The optimum network architecture was selected based on Akaike information criterion and mean absolute percent...
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高温条件下自固结混凝土流变特性的预测
在高温天气条件下(25-40°C)和长时间搅拌(长达110分钟),研究了掺入几种补充材料的自固结混凝土(SCC)的流动特性。实验于2014年夏天在阿布扎比的户外进行。在这些恶劣的环境条件下,研究了掺入不同类型胶结材料(SCMs)的SCC的坍落度流动和流变特性。使用便携式混凝土流变仪(BT2)测量了所研究的SCC混合料的流变特性。在本研究中,采用神经网络技术预测高温和长时间搅拌条件下SCC的流变特性。网络输入参数为环境温度、搅拌时间和SCMs。输出参数为相对粘度、相对屈服应力和坍落度。根据赤池信息准则和平均绝对百分比选择最优网络结构。
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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
23
期刊最新文献
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