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A new formulation for strength characteristics of steel slag aggregate concrete using an artificial intelligence-based approach

机译:利用人工智能基于人工智能的钢结渣聚集混凝土强度特性的新配方

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摘要

Steel slag, an industrial reject from the steel rolling process, has been identified as one of the suitable, environmentally friendly materials for concrete production. Given that the coarse aggregate portion represents about 70% of concrete constituents, other economic approaches have been found in the use of alternative materials such as steel slag in concrete. Unfortunately, a standard framework for its application is still lacking. Therefore, this study proposed functional model equations for the determination of strength properties (compression and splitting tensile) of steel slag aggregate concrete (SSAC), using gene expression programming (GEP). The study, in the experimental phase, utilized steel slag as a partial replacement of crushed rock, in steps 20%, 40%, 60%, 80%, and 100%, respectively. The predictor variables included in the analysis were cement, sand, granite, steel slag, water/cement ratio, and curing regime (age). For the model development, 60-75% of the dataset was used as the training set, while the remaining data was used for testing the model. Empirical results illustrate that steel aggregate could be used up to 100% replacement of conventional aggregate, while also yielding comparable results as the latter. The GEP-based functional relations were tested statistically. The minimum absolute percentage error (MAPE), and root mean square error (RMSE) for compressive strength are 6.9 and 1.4, and 12.52 and 0.91 for the train and test datasets, respectively. With the consistency of both the training and testing datasets, the model has shown a strong capacity to predict the strength properties of SSAC. The results showed that the proposed model equations are reliably suitable for estimating SSAC strength properties. The GEP-based formula is relatively simple and useful for pre-design applications.
机译:钢渣是钢轧机工艺的工业废弃,已被确定为混凝土生产的合适环保材料之一。鉴于粗骨料部分占混凝土成分的约70%,已经在混凝土中使用诸如钢渣等替代材料的其他经济方法。不幸的是,仍然缺乏缺乏申请的标准框架。因此,本研究提出了使用基因表达编程(GEP)确定钢渣聚集体混凝土(SSAC)的强度特性(压缩和分裂拉伸)的功能模型方程。该研究在实验阶段,利用钢渣作为粉碎岩石的部分替代,分别为20%,40%,60%,80%和100%。分析中包含的预测变量是水泥,砂,花岗岩,钢渣,水/水泥比和固化制度(年龄)。对于模型开发,将使用60-75%的数据集作为培训集,而剩余数据用于测试模型。经验结果说明钢骨料可用于100%更换常规聚集体,同时也产生与后者相当的结果。统计上测试了基于GEP的功能关系。用于压缩强度的最小绝对百分比误差(MAPE)和均方根误差(RMSE)分别为6.9和1.4,和12.52和12.52和0.91,用于列车和测试数据集。随着培训和测试数据集的一致性,该模型已经显示出强大的能力来预测SSAC的强度特性。结果表明,所提出的模型方程可靠地适合估计SSAC强度性质。基于GEP的公式相对简单,适用于预设计应用。

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