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Predicting elastic modulus degradation of alkali silica reaction affected concrete using soft computing techniques: A comparative study

机译:使用软计算技术预测碱二氧化硅反应的弹性模量降解混凝土:比较研究

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摘要

Alkali silica reaction (ASR) is a harmful distress mechanism which results in expansion and reduction of mechanical properties of concrete. The latter may cause loss of serviceability and load carrying capacity of affected concrete structures. Influences of ASR on concrete are known to be complex in nature, for which the traditional empirical and curve-fitting approaches are insufficient to provide adequate models to capture such complexity. Recent advancement in soft computing (SC) offers a new tool for tackling the complexity of ASR affected concrete. Most of previous experimental studies agreed that as a result of ASR, the elastic modulus suffers a significant reduction compared with other properties such as compressive and tensile strength of the affected concrete. In this study, an investigation has been conducted, utilising different SC models to quantify ASR-induced elastic modulus degradation of unrestrained concrete. Five SC techniques, namely support vector machine (SVM), artificial neural network (ANN), adaptive neurofuzzy inference system (ANFIS), M5P model and genetic expression programming (GEP), are investigated comparatively in this research. The models, on basis of SC techniques, are developed and tested using a comprehensive dataset collected from existing publications. In order to demonstrate the superiorities of SC techniques, the proposed approaches are compared to several empirical models developed using same dataset. The comparative results show that the developed SC models outperform empirical models in a wide range of evaluation indices, which indicates promising applications of the proposed approach. (C) 2020 Elsevier Ltd. All rights reserved.
机译:碱二氧化硅反应(ASR)是一种有害的痛苦机制,导致混凝土机械性能的膨胀和降低。后者可能导致受影响混凝土结构的可用性和承载能力的损失。已知ASR对混凝土对混凝土的影响是复杂的,传统的经验和曲线拟合方法不足以提供足够的模型以捕获这种复杂性。近期软化计算(SC)的进步为解决ASR影响混凝土的复杂性提供了一种新的工具。以前的大多数实验研究同意由于ASR的结果,与受影响混凝土的压缩和拉伸强度等性质相比,弹性模量具有显着的减少。在这项研究中,已经进行了调查,利用不同的SC模型来量化无限制混凝土的ASR诱导的弹性模量劣化。在这项研究中,对五种SC技术,即支持向量机(SVM),人工神经网络(ANFIS),Adapive神经线推变系统(ANFIS),M5P模型和遗传表达编程(GEP)进行了相对调查。使用从现有出版物收集的全面数据集进行开发和测试SC技术的模型。为了展示SC技术的优越性,将所提出的方法与使用相同数据集开发的若干经验模型进行比较。比较结果表明,发达的SC模型在广泛的评估指标中优于经验模型,这表明了所提出的方法的有前途的应用。 (c)2020 elestvier有限公司保留所有权利。

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