Prediction of residual tensile strength of glass fiber reinforced polymer bars in harsh alkaline concrete environment using fuzzy metaheuristic models

IF 13 1区 工程技术 Q1 ENGINEERING, MARINE
Mudassir Iqbal , Khalid Elbaz , Daxu Zhang , Lili Hu , Fazal E. Jalal
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引用次数: 6

Abstract

The long-term durability of glass fiber reinforced polymer (GFRP) bars in harsh alkaline environments is of great importance in engineering, which is reflected by the environmental reduction factor in various structural codes. The calculation of this factor requires robust models to predict the residual tensile strength of GFRP bars. Therefore, three robust metaheuristic algorithms, namely particle swarm optimization (PSO), genetic algorithm (GA), and support vector machine (SVM), were deployed in this study for achieving the best hyperparameters in the adaptive neuro-fuzzy inference system (ANFIS) in order to obtain more accurate prediction model. Various optimized models were developed to predict the tensile strength retention (TSR) of degraded GFRP rebars in typical alkaline environments (e.g., seawater sea sand concrete (SWSSC) environment in this study). The study also proposed more reliable model to predict the TSR of GFRP bars exposed to alkaline environmental conditions under accelerating laboratory aging. A total number of 715 experimental laboratory samples were collected in a form of extensive database to be trained. K-fold cross-validation was used to assess the reliability of the developed models by dividing the dataset into five equal folds. In order to analyze the efficiency of the metaheuristic algorithms, multiple statistical tests were performed. It was concluded that the ANFIS-SVM-based model is robust and accurate in predicting the TSR of conditioned GFRP bars. In the meantime, the ANFIS-PSO model also yielded reasonable results concerning the prediction of the tensile strength of GFRP bars in alkaline concrete environment. The sensitivity analysis revealed GFRP bar size, volume fraction of fibers, and pH of solution were the most influential parameters of TSR.

用模糊元启发式模型预测玻璃纤维增强聚合物棒在恶劣碱性混凝土环境中的残余抗拉强度
玻璃纤维增强聚合物(GFRP)钢筋在恶劣碱性环境中的长期耐久性在工程中具有重要意义,各种结构规范中的环境折减系数反映了这一点。该因素的计算需要稳健的模型来预测GFRP钢筋的残余抗拉强度。因此,本研究采用了粒子群优化(PSO)、遗传算法(GA)和支持向量机(SVM)三种鲁棒元启发式算法来实现自适应神经模糊推理系统(ANFIS)中的最佳超参数,以获得更准确的预测模型。开发了各种优化模型来预测降解GFRP钢筋在典型碱性环境(例如,本研究中的海水海砂混凝土(SWSC)环境)中的抗拉强度保持率(TSR)。该研究还提出了更可靠的模型来预测暴露于碱性环境条件下加速实验室老化的GFRP棒的TSR。以广泛的数据库形式收集了总共715个实验实验室样本进行培训。通过将数据集划分为五个相等的折叠,使用K折叠交叉验证来评估所开发模型的可靠性。为了分析元启发式算法的效率,进行了多次统计测试。结果表明,基于ANFIS-SVM的模型在预测条件GFRP筋的TSR方面是稳健和准确的。同时,ANFIS-PSO模型在预测碱性混凝土环境下GFRP筋的抗拉强度方面也取得了合理的结果。敏感性分析表明,GFRP棒的尺寸、纤维的体积分数和溶液的pH是影响TSR的最大参数。
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来源期刊
CiteScore
11.50
自引率
19.70%
发文量
224
审稿时长
29 days
期刊介绍: The Journal of Ocean Engineering and Science (JOES) serves as a platform for disseminating original research and advancements in the realm of ocean engineering and science. JOES encourages the submission of papers covering various aspects of ocean engineering and science.
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