Prediction of the rubberized concrete behavior: A comparison of gene expression programming and response surface method

IF 1.9 4区 材料科学 Q3 Materials Science Science and Engineering of Composite Materials Pub Date : 2023-01-01 DOI:10.1515/secm-2022-0222
Rana Faisal Tufail, Danish Farooq, Muhammad Faisal Javed, Tahir Mehmood, Ahsen Maqsoom, Hassan Ashraf, Ahmed Farouk Deifalla, Jawad Ahmad
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Abstract

Abstract The use of rubber in concrete to partially substitute mineral aggregates is an effort to decrease the global amount of scrap tires. This study investigates the behavior of rubberized concrete (RC) with various replacement ratios (0–50%) by volume and replacement type (fine, coarse, and fine-coarse) using soft computing techniques. The uniaxial compressive strength (CS), elastic modulus (EM), and ductility (D) are measured, and the effect of rubber content and the rubber aggregate type on the properties of RC is investigated. Scanning electron microscopy and X-ray diffraction analyses are made to determine its microstructural and chemical composition. This article compares the efficiency of two RC models using a recently developed artificial intelligence technique, i.e., gene expression programming (GEP) and conventional technique, i.e., response surface method (RSM). Statistical models are developed to predict the CS, TS, EM, and D. The mathematical models are validated using determination coefficient ( R 2 ) and adjusted coefficient ( R 2 adj), and they are found to be significant. Furthermore, both methods (i.e., RSM and GEP) are very well correlated with the experimental data. The GEP is found to be more effective at predicting the experimental test results for RC. The projected methods can be executed for any practical value of RC.
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橡胶混凝土性能预测:基因表达编程与响应面法的比较
在混凝土中使用橡胶来部分替代矿物骨料是减少全球废轮胎量的一种努力。本研究使用软计算技术研究了按体积和替代类型(细、粗和细粗)不同替代比(0-50%)的橡胶混凝土(RC)的行为。测定了混凝土的单轴抗压强度(CS)、弹性模量(EM)和延性(D),并研究了橡胶含量和橡胶骨料类型对混凝土性能的影响。用扫描电子显微镜和x射线衍射分析确定了其显微结构和化学成分。本文比较了最近发展的人工智能技术,即基因表达编程(GEP)和传统技术,即响应面法(RSM)的两种RC模型的效率。建立了预测CS、TS、EM和d的统计模型,使用决定系数(r2)和调整系数(r2 adj)对数学模型进行了验证,发现它们具有显著性。此外,两种方法(即RSM和GEP)都与实验数据具有很好的相关性。结果表明,GEP对钢筋混凝土试验结果的预测更为有效。投影方法可适用于任何实际RC值。
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来源期刊
Science and Engineering of Composite Materials
Science and Engineering of Composite Materials 工程技术-材料科学:复合
CiteScore
3.10
自引率
5.30%
发文量
0
审稿时长
4 months
期刊介绍: Science and Engineering of Composite Materials is a quarterly publication which provides a forum for discussion of all aspects related to the structure and performance under simulated and actual service conditions of composites. The publication covers a variety of subjects, such as macro and micro and nano structure of materials, their mechanics and nanomechanics, the interphase, physical and chemical aging, fatigue, environmental interactions, and process modeling. The interdisciplinary character of the subject as well as the possible development and use of composites for novel and specific applications receives special attention.
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