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Development of Void Prediction Models for Kansas Concrete Mixes Used in PCC Pavement

机译:用于PCC路面的堪萨斯州混凝土混合物的空隙预测模型的开发

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Permeability of the concrete material used in Portland Cement Concrete (PCC) pavement structures is a major factor for long-term durability assessment. To properly characterize the permeability response of a PCC pavement structure, the Kansas Department of Transportation (KDOT) generally runs the Boil Test (BT) to determine the % void response. The BT typically measures the volume of permeable pore space within the concrete samples over a period of five hours at a concrete age of 7, 28, and 56 days. In this study, backpropagation Artificial Neural Network- (ANN) and Regression-based % void response prediction models for the BT are developed by using the database provided by KDOT in order to reduce the duration of the testing period or ultimately eliminating the need to conduct the BT. The noted excellent prediction accuracy of the developed models proved that the ANN and the Regression models have efficiently characterized the BT response. Therefore, they can be considered as effective and applicable models to predict the permeability (% void response) response of concrete mixes used in PCC pavements.
机译:波特兰水泥混凝土(PCC)路面结构中使用的混凝土材料的渗透性是长期耐久性评估的主要因素。为了正确地表征PCC路面结构的渗透性响应,堪萨斯州运输部(KDOT)通常运行沸腾测试(BT)来确定空隙响应百分比。 BT通常在7、28和56天的混凝土龄期的5个小时内测量混凝土样品中可渗透孔隙的体积。在这项研究中,使用KDOT提供的数据库开发了BT的反向传播人工神经网络(ANN)和基于回归的%无效反应预测模型,以减少测试时间或最终消除进行BT。所开发模型的出色预测准确性证明了ANN和回归模型已经有效地表征了BT响应。因此,它们可以被认为是预测PCC路面所用混凝土混合物的渗透性(%孔隙度响应)响应的有效且适用的模型。

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