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首页> 外文期刊>Advances in civil engineering >Prediction of the Strength Properties of Carbon Fiber-Reinforced Lightweight Concrete Exposed to the High Temperature Using Artificial Neural Network and Support Vector Machine
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Prediction of the Strength Properties of Carbon Fiber-Reinforced Lightweight Concrete Exposed to the High Temperature Using Artificial Neural Network and Support Vector Machine

机译:人工神经网络和支持向量机预测碳纤维增强轻质混凝土的高温强度特性

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摘要

The artificial neural network and support vector machine were used to estimate the compressive strength and flexural strength of carbon fiber-reinforced lightweight concrete with the silica fume exposed to the high temperature. Cement was replaced with three percentages of silica fumes (0%, 10%, and 20%). The carbon fibers were used in four different proportions (0, 2, 4, and 8 kg/m(3)). The specimens of each concrete mixture were heated at 20 degrees C, 400 degrees C, 600 degrees C, and 800 degrees C. After this process, the specimens were subjected to the strength tests. The amount of cement, the amount of silica fumes, the amount of carbon fiber, the amount of aggregates, and temperature were selected as the input variables for the prediction models. The compressive and flexural strengths of the lightweight concrete were determined as the output variables. The model results were compared with the experimental results. The best results were achieved from the artificial neural network model. The accuracy of the artificial neural network model was found at 99.02% and 96.80%.
机译:人工神经网络和支持向量机被用来估计硅粉暴露在高温下的碳纤维增强轻质混凝土的抗压强度和抗弯强度。用三个百分比的硅粉(0%,10%和20%)代替了水泥。碳纤维以四种不同的比例使用(0、2、4和8 kg / m(3))。将每种混凝土混合物的试样分别在20摄氏度,400摄氏度,600摄氏度和800摄氏度下加热。在此过程之后,对试样进行强度测试。选择水泥量,硅粉量,碳纤维量,集料量和温度作为预测模型的输入变量。确定轻质混凝土的抗压强度和抗弯强度作为输出变量。将模型结果与实验结果进行比较。人工神经网络模型获得了最佳结果。人工神经网络模型的准确性分别为99.02%和96.80%。

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