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BAT Algorithm-Based ANN to Predict the Compressive Strength of Concrete—A Comparative Study

机译:基于BAT算法的ANN预测混凝土的压缩强度 - 一种比较研究

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The number of effective factors and their nonlinear behaviour—mainly the nonlinear effect of the factors on concrete properties—has led researchers to employ complex models such as artificial neural networks (ANNs). The compressive strength is certainly a prominent characteristic for design and analysis of concrete structures. In this paper, 1030 concrete samples from literature are considered to model accurately and efficiently the compressive strength. To this aim, a Feed-Forward (FF) neural network is employed to model the compressive strength based on eight different factors. More in detail, the parameters of the ANN are learned using the bat algorithm (BAT). The resulting optimized model is thus validated by comparative analyses towards ANNs optimized with a genetic algorithm (GA) and Teaching-Learning-Based-Optimization (TLBO), as well as a multi-linear regression model, and four compressive strength models proposed in literature. The results indicate that the BAT-optimized ANN is more accurate in estimating the compressive strength of concrete.
机译:有效因素及其非线性行为的数量 - 主要是混凝土特性因素的非线性效应 - 导致研究人员采用人工神经网络(ANNS)等复杂模型。抗压强度肯定是混凝土结构的设计和分析的突出特征。在本文中,从文献中的1030个混凝土样本被认为是准确且有效地模拟压缩强度。为此目的,采用前馈(FF)神经网络基于八个不同因素来模拟抗压强度。更详细地,使用BAT算法(BAT)学习ANN的参数。因此,通过对遗传算法(GA)和基于教学的优化(TLBO)进行优化的ANN的比较分析来验证所得到的优化模型,以及文献中提出的四种压缩强度模型以及四种压缩强度模型。结果表明,蝙蝠优化的ANN在估计混凝土的抗压强度方面更准确。

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