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An investigation on the mortars containing blended cement subjected to elevated temperatures using Artificial Neural Network (ANN) models

机译:使用人工神经网络(ANN)模型研究含掺水泥的灰浆在高温下的研究

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This paper presents the results of an investigation on the compressive strength and weight loss of mortars containing three types of fillers as cement replacements; Limestone Filler (LF), Silica Fume (SF) and Trass (TR), subjected to elevated temperatures including 400°C, 600°C, 800°C and 1000°C. Results indicate that addition of TR to blended cements, compared to SF addition, leads to higher compressive strength and lower weight loss at elevated temperatures. In order to model the influence of the different parameters on the compressive strength and the weight loss of specimens, artificial neural networks (ANNs) were adopted. Different diagrams were plotted based on the predictions of the most accurate networks to study the effects of temperature, different fillers and cement content on the target properties. In addition to the impressive RMSE and R2 values of the best networks, the data used as the input for the prediction plots were chosen within the range of the data introduced to the networks in the training phase. Therefore, the prediction plots could be considered reliable to perform the parametric study.
机译:本文介绍了对含有三种类型的填料作为水泥替代品的砂浆的抗压强度和重量损失的研究结果。经受高温(包括400°C,600°C,800°C和1000°C)的石灰石填料(LF),硅粉(SF)和Trass(TR)。结果表明,与SF添加相比,向掺混水泥中添加TR导致较高的抗压强度和较低的失重(在高温下)。为了模拟不同参数对标本抗压强度和重量损失的影响,采用了人工神经网络(ANN)。根据最精确网络的预测绘制了不同的图表,以研究温度,不同填料和水泥含量对目标性能的影响。除了最佳网络的令人印象深刻的RMSE和R2值以外,还可以在训练阶段引入网络的数据范围内选择用作预测图输入的数据。因此,可以将预测图视为执行参数研究的可靠方法。

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