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Shear strength prediction of steel fiber reinforced concrete beam using hybrid intelligence models: A new approach

机译:基于混合智能模型的钢纤维混凝土梁抗剪强度预测:一种新方法

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摘要

Despite modern advancements in structural engineering, the behavior and design of reinforced concrete beams in shear are still a major concern for structural engineers. In this research, a new Support Vector Regression algorithm coupled with Particle Swarm Optimization (SVR-PSO) is developed to predict the shear strength (Ss) of steel fiber-reinforced concrete beams (SFRC) using several input combinations denoting the dimensional and material properties. The experimental test data are collected from reliable literature sources. The main variables used to construct the predictive model are related to the dimensional and material properties of the beams. SVR-PSO, the objective predictive model, is validated against a classical neural network model tuned with the same metaheuristic optimizer algorithm. The findings of the modeling study provide a clear evidence of the superior capability of the SVR-PSO used to predict the SFRC shear strength relative to the benchmark model. In addition, the construction of the predictive models with a lesser number of input data attributes are attained, leading an acceptable prediction accuracy of the SVR-PSO compared to the ANN-PSO model. In summary, the proposed SVR-PSO methodology has demonstrates an effective engineering strategy that can be applied in problems of structural and construction engineering prospective, applied to predict shear strength of steel fiber reinforced concrete beam using advanced hybrid artificial intelligence models developed in this study.
机译:尽管结构工程方面有了现代的进步,但钢筋混凝土梁在剪力作用下的性能和设计仍然是结构工程师关注的主要问题。在这项研究中,开发了一种新的支持向量回归算法,并结合了粒子群算法(SVR-PSO),使用表示尺寸和材料特性的几种输入组合来预测钢纤维增强混凝土梁(SFRC)的抗剪强度(Ss)。 。实验测试数据是从可靠的文献资料中收集的。用于构建预测模型的主要变量与梁的尺寸和材料特性有关。 SVR-PSO(客观预测模型)已针对使用相同的元启发式优化器算法调整的经典神经网络模型进行了验证。建模研究的结果为SVR-PSO相对于基准模型的SFRC抗剪强度预测能力提供了清晰的证据。另外,获得具有较少数量的输入数据属性的预测模型的构造,与ANN-PSO模型相比,SVR-PSO的预测精度可以接受。综上,所提出的SVR-PSO方法论证明了一种有效的工程策略,可以应用于结构和建筑工程方面的问题,并可以使用本研究开发的高级混合人工智能模型来预测钢纤维增强混凝土梁的抗剪强度。

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