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Artificial Neural Network Estimation of the Effect of Varying Curing Conditions and Cement Type on Hardened Concrete Properties

机译:人工神经网络估计不同养护条件和水泥类型对硬化混凝土性能的影响

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The use of mineral admixtures and industrial waste as a replacement for Portland cement is recognized widely for its energy efficiency along with reduced CO 2 emissions. The use of materials such as fly ash, blast-furnace slag or limestone powder in concrete production makes this process a sustainable one. This study explored a number of hardened concrete properties, such as compressive strength, ultrasonic pulse velocity, dynamic elasticity modulus, water absorption and depth of penetration under varying curing conditions having produced concrete samples using Portland cement (PC), slag cement (SC) and limestone cement (LC). The samples were produced at 0.63 and 0.70 w/c (water/cement) ratios. Hardened concrete samples were then cured under three conditions, namely standard (W), open air (A) and sealed plastic bag (B). Although it was found that the early-age strength of slag cement was lower, it was improved significantly on 90th day. In terms of the effect of curing conditions on compressive strength, cure W offered the highest compressive strength, as expected, while cure A offered slightly lower compressive strength levels. An increase in the w/c ratio was found to have a negative impact on pozzolanic reactions, which resulted in poor hardened concrete properties. Furthermore, carbonation effect was found to have positive effects on some of the concrete properties, and it was observed to have improved the depth of water penetration. Moreover, it was possible to estimate the compressive strength with high precision using artificial neural networks (ANN). The values of the slopes of the regression lines for training, validating and testing datasets were 0.9881, 0.9885 and 0.9776, respectively. This indicates the high accuracy of the developed model as well as a good correlation between the predicted compressive strength values and the experimental (measured) ones.
机译:使用矿物掺合料和工业废料替代波特兰水泥因其能源效率以及减少的CO 2排放而得到广泛认可。在混凝土生产中使用粉煤灰,高炉矿渣或石灰石粉等材料可使该过程成为可持续的过程。这项研究探索了许多硬化混凝土的性能,例如在不同的养护条件下的抗压强度,超声脉冲速度,动态弹性模量,吸水率和渗透深度,已经使用波特兰水泥(PC),矿渣水泥(SC)和石灰石水泥(LC)。以0.63和0.70w / c(水/水泥)的比率生产样品。然后在三种条件下固化硬化的混凝土样品,即标准(W),露天(A)和密封的塑料袋(B)。尽管发现矿渣水泥的早期强度较低,但在第90天时已显着提高。就固化条件对抗压强度的影响而言,固化W提供了预期的最高抗压强度,而固化A提供的抗压强度则略低。发现w / c比的增加对火山灰反应具有负面影响,这导致较差的硬化混凝土性能。此外,发现碳化作用对某些混凝土性能具有积极作用,并且观察到碳化作用改善了水的渗透深度。此外,可以使用人工神经网络(ANN)高精度估算抗压强度。用于训练,验证和测试数据集的回归线的斜率值分别为0.9881、0.9885和0.9776。这表明所开发模型的准确性很高,并且预测的抗压强度值与实验(测量)值之间具有良好的相关性。

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