Almeida Talita Andrade da Costa, Felix Emerson Felipe, de Sousa Carlos Manuel Andrade, Pedroso Gabriel Orquizas Mattielo, Motta Mariana Ferreira Benessiuti, Prado Lisiane Pereira
Department of Civil Engineering, School of Science and Engineering, São Paulo State University (UNESP), Guaratinguetá 12516-410, Brazil.
Materials (Basel). 2023 Dec 17;16(24):7683. doi: 10.3390/ma16247683.
The artificial neural networks (ANNs)-based model has been used to predict the compressive strength of concrete, assisting in creating recycled aggregate concrete mixtures and reducing the environmental impact of the construction industry. Thus, the present study examines the effects of the training algorithm, topology, and activation function on the predictive accuracy of ANN when determining the compressive strength of recycled aggregate concrete. An experimental database of compressive strength with 721 samples was defined considering the literature. The database was used to train, validate, and test the ANN-based models. Altogether, 240 ANNs were trained, defined by combining three training algorithms, two activation functions, and topologies with a hidden layer containing 1-40 neurons. The ANN with a single hidden layer including 28 neurons, trained with the Levenberg-Marquardt algorithm and the hyperbolic tangent function, achieved the best level of accuracy, with a coefficient of determination equal to 0.909 and a mean absolute percentage error equal to 6.81%. Furthermore, the results show that it is crucial to avoid the use of overly complex models. Excessive neurons can lead to exceptional performance during training but poor predictive ability during testing.
基于人工神经网络(ANNs)的模型已被用于预测混凝土的抗压强度,有助于创建再生骨料混凝土混合物并减少建筑业对环境的影响。因此,本研究考察了训练算法、拓扑结构和激活函数对ANN在确定再生骨料混凝土抗压强度时预测精度的影响。考虑到文献资料,定义了一个包含721个样本的抗压强度实验数据库。该数据库用于训练、验证和测试基于ANN的模型。总共训练了240个ANN,它们由三种训练算法、两种激活函数以及具有1 - 40个神经元的隐藏层的拓扑结构组合而成。具有单个隐藏层且包含28个神经元的ANN,采用Levenberg - Marquardt算法和双曲正切函数进行训练,达到了最佳的精度水平,决定系数为0.909,平均绝对百分比误差为6.81%。此外,结果表明避免使用过于复杂的模型至关重要。过多的神经元可能导致训练期间表现出色,但测试期间预测能力较差。