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Predicting the mechanical properties of sustainable concrete containing waste foundry sand using multi-objective ANN approach

机译:使用多目标ANN方法预测含废弃物砂砂的可持续混凝土的力学性能

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The amount of waste materials obtained from industries is increasing every day, which has been identified as one of the crucial issues in many countries. Waste foundry sand (WFS) is a by-product of the foundry industry, which can be used as a partial replacement for fine aggregate in concrete. The aim of this study is to predict the mechanical properties of concrete containing WFS using an artificial neural network (ANN) assisted by multi-objective multi-verse optimizer (MOMVO) algorithm. In the proposed model, both network error and complexity were considered as multi-objective optimization problems which were solved using MOMVO. To develop the proposed model, a comprehensive database including effective parameters on the mechanical properties of concretes were gathered and modeled in MATLAB environment. For compressive strength, splitting tensile strength, modulus of elasticity and flexural strength of concrete containing WFS, several optimal ANN models were achieved and the performances of the two selected models for each mechanical property were compared. The results showed the potential of acceptable accuracy of the developed ANN model assisted by MOMVO algorithm in estimation of the studied mechanical properties. Finally, a parametric study was carried out to investigate the contribution of each input variable on the mechanical properties of concrete containing WFS. The results inferred that the ratios of water to cement, fine aggregate to total aggregate, and coarse aggregate to cement had the most effect on the mechanical properties. (C) 2021 Elsevier Ltd. All rights reserved.
机译:从行业获得的废料量每天增加,这已被确定为许多国家的至关重要问题。垃圾铸造砂(WFS)是铸造行业的副产品,可用作混凝土中的细骨料的部分替代品。本研究的目的是使用多目标多韵度优化器(MOMVO)算法辅助的人工神经网络(ANN)预测含有WFS的混凝土的机械性能。在所提出的模型中,网络错误和复杂性都被认为是使用MOMVO解决的多目标优化问题。为了开发所提出的模型,收集了一个综合数据库,包括关于混凝土机械性能的有效参数,并在Matlab环境中建模。对于抗压强度,分裂拉伸强度,含有WFS混凝土的弹性模量和抗弯曲强度,实现了几种最佳的ANN模型,并进行了两个所选模型的性能。结果表明,在研究的机械性能估计中,MOMVO算法辅助开发的ANN模型的可接受精度的潜力。最后,进行了参数研究,以研究每个输入变量对含有WFS混凝土的机械性能的贡献。结果推断,水与水泥的比例,细骨料细聚集在骨料和水泥中的粗骨料对机械性能产生最多。 (c)2021 elestvier有限公司保留所有权利。

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