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The assessment of the compressive strength and thickness of concrete structures using nondestructive testing and an artificial neural network

机译:使用无损检测和人工神经网络评估混凝土结构的抗压强度和厚度

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摘要

This study focuses on the prediction of concrete compressive strength and the unknown thickness of concrete structures as a partial development of a concrete assessment system. The nondestructive tests (NDTs), impact-echo method and spectral analysis of surface wave method were applied to predict concrete compressive strength for the correlation between NDT results and cylinder tests results. The concrete strength prediction and the measurement of thickness were effectively achieved by using an artificial neural network technology. As actual problems were tested in the neural network system, good agreement between the results from the cylinder test and the results from the neural network run was achieved. The accuracy in measuring the thickness of the specimen was successfully achieved using the same technology. The result of this study is a basic algorithm for the automation of predicting the compressive strength and the thickness of concrete member. Automation of these results can contribute to predict the accurate form removal time and unknown slab thickness in building construction practice.
机译:这项研究的重点是作为混凝土评估系统的一部分,对混凝土的抗压强度和混凝土结构的未知厚度进行预测。采用无损检测,冲击回波法和表面波谱分析法预测混凝土的抗压强度,以验证无损检测结果与圆柱试验结果之间的相关性。利用人工神经网络技术有效地实现了混凝土强度的预测和厚度的测量。由于在神经网络系统中测试了实际问题,因此圆柱测试的结果与神经网络运行的结果之间取得了良好的一致性。使用相同的技术成功地达到了测量样品厚度的精度。这项研究的结果是一种自动预测混凝土构件抗压强度和厚度的基本算法。这些结果的自动化可有助于预测建筑施工实践中准确的模板去除时间和未知的楼板厚度。

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