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Concrete properties evaluation by statistical fusion of NDT techniques

机译:通过无损检测技术的统计融合来评估混凝土性能

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摘要

Measurements from Non-Destructive Testing (NDT) techniques are affected in different ways by concrete properties such as porosity, complexity of the pore network, water content, strength, etc. Therefore, extracting one concrete property from one NDT measurement appears to result in uncertainties. This highlights the benefit of NDT data fusion to evaluate accurately concrete properties. In this paper, NDT measurements from GPR, electrical resistivity and ultrasonic pulse velocity were combined to predict more accurately concrete properties such as strength and water content. Two techniques of data fusion were used namely Response Surface Method (RSM) and artificial neural networks (ANNs). The results obtained show the effectiveness of the statistical modeling to predict the properties of concretes by fusion of NDT measurements. In the context of this study, the performances of the two techniques of fusion appear relevant in terms of water content and concrete strength prediction. ANN models exhibit better predictive ability than RSM ones.
机译:无损检测(NDT)技术的测量结果会以不同的方式受到孔隙度,孔隙网络的复杂性,水含量,强度等混凝土性能的影响。因此,从一项无损检测方法中提取一种混凝土性能似乎会导致不确定性。这凸显了无损检测数据融合技术对准确评估混凝土性能的好处。在本文中,结合了GPR,电阻率和超声脉冲速度的NDT测量结果,可以更准确地预测混凝土的性能,例如强度和含水量。使用了两种数据融合技术,即响应面法(RSM)和人工神经网络(ANN)。获得的结果表明统计模型通过无损检测测量值的融合预测混凝土性能的有效性。在本研究的背景下,两种融合技术的性能在含水量和混凝土强度预测方面似乎是相关的。人工神经网络模型比RSM模型具有更好的预测能力。

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