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首页> 外文期刊>HBRC Journal >Simulating USBR4908 by ANN modeling to analyse the effect of mineral admixture with ordinary and pozzolanic cements on the sulfate resistance of concrete
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Simulating USBR4908 by ANN modeling to analyse the effect of mineral admixture with ordinary and pozzolanic cements on the sulfate resistance of concrete

机译:通过ANN建模模拟USBR4908,以分析矿物掺合料与普通和火山灰水泥对混凝土耐硫酸盐性的影响

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One of the available tests that can be used to evaluate the sulfate resistance of concrete is a procedure for length change of hardened concrete exposed to alkali sulfates (USBR4908). However, there are deficiencies in this test method including a lengthy measuring period, insensitivity of the measurement tool to the progression of sulfate attack. Moreover it is difficult to obtain experimental expansion due to time and cost limitations. A reasonable prediction for the expansion in USBR4908 is basically required. This study focuses on the artificial neural network (ANN) as an alternative approach to evaluate the sulfate resistance of concrete. A total of 273 different data for three types of Portland cement combined with fly ash (FA) or silica fume (SF) concrete mixes, along with differentw/cratios of 0.35, 0.45 and 0.55 were collected from the experimental program. ANN models were developed. The data used in the ANN model consisted of five input parameters which includeW/Bratio, cement content(CC), FA or SF content, tricalcium aluminate content (C3A), and exposure duration (D). Output parameter is determined as expansion (E). Back propagation (BP) algorithm was employed for the ANN training in which a Tansig function was used as the nonlinear transfer function. Through the comparison of the estimated results from the ANN models and experimental data, it was clear that the ANN models give high prediction accuracy. In addition, the research results demonstrate that using ANN models to predict the expansion in concrete cylinders is practical and beneficial.
机译:可以用来评估混凝土抗硫酸盐性的可用测试之一是暴露于碱性硫酸盐的硬化混凝土长度变化的程序(USBR4908)。然而,该测试方法存在缺陷,包括测量周期长,测量工具对硫酸盐侵蚀的发展不敏感。此外,由于时间和成本的限制,很难获得实验的扩展。基本上需要对USBR4908的扩展进行合理的预测。这项研究的重点是人工神经网络(ANN),作为评估混凝土耐硫酸盐性的替代方法。从实验程序中收集了三种类型的波特兰水泥与粉煤灰(FA)或硅粉(SF)混凝土混合料的总计273种不同数据,以及不同的w / cratos值0.35、0.45和0.55。开发了人工神经网络模型。 ANN模型中使用的数据由五个输入参数组成,包括W / Bratio,水泥含量(CC),FA或SF含量,铝酸三钙含量(C3A)和暴露持续时间(D)。输出参数确定为扩展(E)。反向传播(BP)算法用于ANN训练,其中Tansig函数用作非线性传递函数。通过对ANN模型和实验数据的估计结果进行比较,可以清楚地看到ANN模型具有较高的预测精度。此外,研究结果表明,使用ANN模型预测混凝土圆柱体的膨胀是实用且有益的。

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