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Early-age concrete strength estimation based on piezoelectric sensor using artificial neural network

机译:基于人工神经网络的压电传感器早期混凝土强度估算

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Recently, novel methods to estimate the strength of concrete have been reported based on numerous NDT methods. Especially, electro-mechanical impedance technique using piezoelectric sensors are studied to estimate the strength of concrete. However, the previous research works could not provide the general information about the early-age strength important to manage the quality of concrete and/or the construction process. In order to estimate the early-age strength of concrete, the electro-mechanical impedance method and the artificial neural network(ANN) is utilized in this study. The electro-mechanical impedance varies with the mechanical properties of host structures. Because the strength development is most influential factor among the change of mechanical properties at early-age of curing, it is possible to estimate the strength of concrete by analyzing the change of E/M impedance. The strength of concrete is a complex function of several factors like mix proportion, temperature, elasticity, etc. Because of this, it is hard to mathematically derive equations about strength of concrete. The ANN can provide the solution about early-age strength of concrete without mathematical equations. To verify the proposed approach, a series of experimental studies are conducted. The impedance signals are measured using embedded piezoelectric sensors during curing process and the resonant frequency of impedance is extracted as a strength feature. The strength of concrete is calculated by regression of strength development curve obtained by destructive test. Then ANN model is established by trained using experimental results. Finally the ANN model is verified using impedance data of other sensors.
机译:近来,已经报道了基于多种无损检测方法来评估混凝土强度的新颖方法。特别是,研究了使用压电传感器的机电阻抗技术来估计混凝土的强度。但是,先前的研究工作无法提供有关早期强度的一般信息,而早期强度对于管理混凝土和/或施工过程的质量很重要。为了估算混凝土的早期强度,本文采用了机电阻抗法和人工神经网络(ANN)。机电阻抗随主体结构的机械性能而变化。由于强度的发展是固化初期的机械性能变化中最重要的影响因素,因此可以通过分析E / M阻抗的变化来估计混凝土的强度。混凝土的强度是诸如混合比,温度,弹性等多个因素的复杂函数。因此,很难从数学上推导有关混凝土强度的方程式。人工神经网络可以提供关于混凝土的早期强度的解决方案,而无需数学方程式。为了验证所提出的方法,进行了一系列实验研究。在固化过程中使用嵌入式压电传感器测量阻抗信号,并提取阻抗的共振频率作为强度特征。混凝土的强度是通过破坏性试验获得的强度发展曲线的回归来计算的。然后利用实验结果进行训练,建立了人工神经网络模型。最后,使用其他传感器的阻抗数据验证了人工神经网络模型。

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