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Predicting residual compressive strength of self-compacted concreteunder various temperatures and relative humidity conditions by artificial neural networks

机译:利用人工神经网络预测在各种温度和相对湿度条件下自密实混凝土的残余抗压强度

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摘要

Artificial neural network models can be successfully used to simulate the complex behavior of many problems in civil engineering. As compared to conventional computational methods, this popular modeling technique is powerful when the relationship between system parameters is intrinsically nonlinear, or cannot be explicitly identified, as in the case of concrete behavior. In this investigation, an artificial neural network model was developed to assess the residual compressive strength of self-compacted concrete at elevated temperatures (20-900 degrees C) and various relative humidity conditions (28-99%). A total of 332 experimental datasets, collected from available literature, were used for model calibration and verification. Data used in model development incorporated concrete ingredients, filler and fiber types, and environmental conditions. Based on the feed-forward back propagation algorithm, systematic analyses were performed to improve the accuracy of prediction and determine the most appropriate network topology. Training, testing, and validation results indicated that residual compressive strength of self compacted concrete, exposed to high temperatures and relative humidity levels, could be estimated precisely with the suggested model. As illustrated by statistical indices, the reliability between experimental and predicted results was excellent. With new ingredients and different environmental conditions, the proposed model is an efficient approach to estimate the residual compressive strength of self-compacted concrete as a substitute for sophisticated laboratory procedures.
机译:人工神经网络模型可以成功地用于模拟土木工程中许多问题的复杂行为。与传统的计算方法相比,这种流行的建模技术在系统参数之间的关系本质上是非线性的或无法明确识别的情况下(如在具体行为的情况下)是强大的。在这项研究中,开发了一个人工神经网络模型来评估自密实混凝土在高温(20-900摄氏度)和各种相对湿度条件(28-99%)下的残余抗压强度。从可用文献中收集的总共332个实验数据集用于模型校准和验证。模型开发中使用的数据包括混凝土成分,填料和纤维类型以及环境条件。基于前馈反向传播算法,进行了系统分析,以提高预测的准确性并确定最合适的网络拓扑。培训,测试和验证结果表明,可以通过建议的模型精确估算暴露在高温和相对湿度下的自密实混凝土的残余抗压强度。如统计指标所示,实验结果与预测结果之间的可靠性非常好。利用新的成分和不同的环境条件,提出的模型是估算自密实混凝土的残余抗压强度的有效方法,可以代替复杂的实验室程序。

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