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Modeling compressive strength of recycled aggregate concrete by Artificial Neural Network, Model Tree and Non-linear Regression

机译:基于人工神经网络,模型树和非线性回归的再生骨料混凝土抗压强度建模

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In the recent past Artificial Neural Networks (ANN) have emerged out as a promising technique for predicting compressive strength of concrete. In the present study back propagation was used to predict the 28day compressive strength of recycled aggregate concrete (RAC) along with two other data driven techniques namely Model Tree (MT) and Non-linear Regression (NLR). Recycled aggregate is the current need of the hour owing to its environmental friendly aspect of re-use of the construction waste. The study observed that, prediction of 28day compressive strength of RAC was done better by ANN than NLR and MT. The input parameters were cubic meter proportions of Cement, Natural fine aggregate, Natural coarse Aggregates, recycled aggregates, Admixture and Water (also called as raw data). The study also concluded that ANN performs better when non-dimensional parameters like Sand–Aggregate ratio, Water–total materials ratio, Aggregate–Cement ratio, Water–Cement ratio and Replacement ratio of natural aggregates by recycled aggregates, were used as additional input parameters. Study of each network developed using raw data and each non dimensional parameter facilitated in studying the impact of each parameter on the performance of the models developed using ANN, MT and NLR as well as performance of the ANN models developed with limited number of inputs. The results indicate that ANN learn from the examples and grasp the fundamental domain rules governing strength of concrete.
机译:在最近的过去,人工神经网络(ANN)已经成为预测混凝土抗压强度的一种有前途的技术。在本研究中,反向传播与其他两种数据驱动技术,即模型树(MT)和非线性回归(NLR)一起,用于预测再生骨料混凝土(RAC)的28天抗压强度。由于其对建筑废料的环保利用,可再生的骨料是当前的小时需求。研究发现,ANN对RAC 28天抗压强度的预测优于NLR和MT。输入参数为立方米比例的水泥,天然细骨料,天然粗骨料,再生骨料,外加剂和水(也称为原始数据)。该研究还得出结论,当将砂-骨料比,水-总材料比,骨料-水泥比,水-水泥比和天然骨料对再生骨料的替代率等无量纲参数用作附加输入参数时,人工神经网络的效果更好。 。使用原始数据和每个无量纲参数开发的每个网络的研究有助于研究每个参数对使用ANN,MT和NLR开发的模型的性能以及使用有限数量的输入开发的ANN模型的性能的影响。结果表明,人工神经网络从实例中学习并掌握了控制混凝土强度的基本领域规则。

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