A New Approach to Predict the Porosity of Pervious Concrete at Its Fresh State

A. Kariapper, D. Nanayakkara
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Abstract

A mathematical formula was derived to predict the porosity of pervious concrete (PC) at its fresh state. Coarse aggregates (CA) within the size ranges of 0.016–0.02m and 0.01–0.014m were used in the study. Pervious concrete was mixed for two stages. A w-c ratio of 0.3 was used in the study. A scaling factor was defined to represent the thickness of cement paste coated around CA. The scaling factor is independent of the size of CA used and their volume based binary combinations. The percentage difference between the two scaling factor values obtained for CA having a size of 0.01–0.014m was calculated to be 1.14 percent. The tested wet density in all PC batches made in the first stage was approximately 170–264kg/m3 lesser than the designed wet density. The difference between the tested porosity values and the porosity values calculated by the mathematical model has been developed is approximately 0.01–0.015m3 for all pervious concrete batches. It was observed that as the scaling factor increases the wet density increases and the porosity reduces. The porosity values calculated by the mathematical model and the tested porosity show a very strong linear relationship.
透水混凝土新状态孔隙率预测的新方法
推导了透水混凝土在新鲜状态下孔隙率的数学公式。研究采用的粗骨料粒径范围为0.016 ~ 0.02m和0.01 ~ 0.014m。透水混凝土的混合分为两个阶段。本研究采用0.3的w-c比值。定义了一个比例因子来表示CA周围涂覆的水泥膏体的厚度。该比例因子与所使用的CA的大小及其基于体积的二进制组合无关。对于尺寸为0.01-0.014m的CA,计算得到的两个比例因子值之间的百分比差为1.14%。第一阶段生产的所有PC批次的测试湿密度比设计湿密度低约170-264kg /m3。所有透水混凝土批次的孔隙率测试值与数学模型计算的孔隙率值之间的差异约为0.01-0.015m3。结果表明,随着垢系数的增大,湿密度增大,孔隙率减小。数学模型计算的孔隙度值与实测孔隙度呈很强的线性关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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