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Genetic programming based formulation for fresh and hardened properties of self-compacting concrete containing pulverised fuel ash

机译:基于遗传规划的粉煤灰自密实混凝土的新鲜和硬化性能配方

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Self-compacting concrete (SCC) flows into place and around obstructions under its own weight to fill the formwork completely and self-compact without any segregation and blocking. Elimination of the need for compaction leads to better quality concrete and substantial improvement of working conditions. This investigation aimed to show possible applicability of genetic programming (GP) to model and formulate the fresh and hardened properties of self-compacting concrete (SCC) containing pulverised fuel ash (PFA) based on experimental data. Twenty-six mixes were made with 0.38 to 0.72 water-to-binder ratio (W/B), 183-317 kg/m~3 of cement content, 29-261 kg/m~3 of PFA, and 0 to 1 % of superplasticizer, by mass of powder. Parameters of SCC mixes modelled by genetic programming were the slump flow, JRing combined to the Orimet, JRing combined to cone, and the compressive strength at 7,28 and 90 days. GP is constructed of training and testing data using the experimental results obtained in this study. The results of genetic programming models are compared with experimental results and are found to be quite accurate. GP has showed a strong potential as a feasible tool for modelling the fresh properties and the compressive strength of SCC containing PFA and produced analytical prediction of these properties as a function as the mix ingredients. Results showed that the GP model thus developed is not only capable of accurately predicting the slump flow, JRing combined to the Orimet, JRing combined to cone, and the compressive strength used in the training process, but it can also effectively predict the above properties for new mixes designed within the practical range with the variation of mix ingredients.
机译:自密实混凝土(SCC)在自重作用下流向适当位置并绕过障碍物,从而完全填充模板并自密实,没有任何隔离和阻塞。消除了对压实的需求,可以提高混凝土的质量并大大改善工作条件。这项研究旨在表明,基于实验数据,遗传规划(GP)可以用于建模和制定包含粉煤灰(PFA)的自密实混凝土(SCC)的新鲜和硬化性能的适用性。混合了26种混合料,其中水灰比为0.38至0.72(W / B),水泥含量为183-317 kg / m〜3,PFA为29-261 kg / m〜3、0-1%增塑剂的含量,以粉末质量计。用遗传程序模拟的SCC混合料的参数是坍落度,Jring和Orimet的结合,Jring和圆锥的结合以及在7.28和90天的抗压强度。 GP是使用本研究中获得的实验结果由训练和测试数据构成的。将遗传程序设计模型的结果与实验结果进行比较,发现结果非常准确。 GP已显示出强大的潜力,可用于对包含PFA的SCC的新鲜特性和抗压强度进行建模,并对这些特性作为混合成分的功能进行了分析预测。结果表明,这样开发的GP模型不仅能够准确预测坍落流量,将JRing结合到Orimet上,将JRing结合到圆锥上以及在训练过程中使用的抗压强度,而且还可以有效地预测上述特性新混合物在实际范围内设计,并具有各种混合成分。

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