Application of artificial neural network in determination of sorptivity model of concrete with varying percent of replacement of sand to copper slag

Kim Paolo S. Aquino, Jessica S. Caisip, Aldrin Nicole I. Placiente, Erwin C. Reyes, M. Calilung
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引用次数: 1

Abstract

Many construction companies and individuals (construction designers) are still using spreadsheets and laboratory tests just to obtain a certain data. In the field of technologies, advancement will contribute to the improvement of designing structures in terms of usefulness and effectiveness. By using the principle of artificial neural network, this study developed a sorptivity model which gives immediate quantities with high accuracy and precision which are needed to attain appropriate sorptivity values of concrete design mix. In this study, 40 concrete samples with varying percent replacement of copper slag to sand were tested for sorptivity by following the ASTM C1585 which is the Standard Test Method for Measurement of Rate of Absorption of Water by Hydraulic-Cement Concretes. These values in turn were used in the development of the sorptivity model using Artificial Neural Network. This study used the software called Matrix Laboratory (MATLAB) to train several neural networks. Several numbers of neurons in the hidden layer were considered because there is no actual study that suggests that a certain number of nodes in the hidden layer produce the best model. A parametric testing was conducted to determine which of the parameters considered have the greatest significance to the target output. The predicted results of the best model were compared to the experimental values of sorptivity and produced a 2.36 percentage error. The study results suggest that ANN models could be used to predict the sorptivity value of a concrete sample. The model produced a good prediction result.
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人工神经网络在铜渣掺砂率变化时混凝土吸附模型确定中的应用
许多建筑公司和个人(建筑设计师)仍然使用电子表格和实验室测试来获取某些数据。在技术领域,进步将有助于在有用性和有效性方面改进设计结构。利用人工神经网络原理,建立了一种具有较高准确度和精密度的混凝土设计配合比吸附率模型。在本研究中,根据ASTM C1585《测定水水泥混凝土吸水率的标准试验方法》,对40个铜渣与砂替代率不同的混凝土样品进行了吸附性测试。这些值依次用于利用人工神经网络开发吸附率模型。本研究使用矩阵实验室(MATLAB)软件来训练几个神经网络。由于没有实际的研究表明隐藏层中一定数量的节点会产生最好的模型,所以我们考虑了隐藏层中几个神经元的数量。进行了参数测试,以确定哪些参数对目标输出最重要。将最佳模型的预测结果与吸附率的实验值进行了比较,误差为2.36%。研究结果表明,人工神经网络模型可用于预测混凝土试样的吸附率值。该模型取得了较好的预测效果。
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