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Prediction and sensitivity analysis of compressive strength in segregated lightweight concrete based on artificial neural network using ultrasonic pulse velocity

机译:基于超声脉冲速度的人工神经网络在轻质隔离混凝土中抗压强度的预测和敏感性分析

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Due to the low density of the aggregates used, lightweight aggregate concrete (LWAC) is susceptible to segregation because of the differences between the densities of their components. The segregation in LWAC causes a great variability in the concrete properties causing negative effects in its mechanical properties and durability. Ultrasonic velocity and artificial neural network (ANN) were applied by diagnosis and prediction in the impact of the compressive strength in LWAC specimens. 640 experimental observations were used to select the best ANN model. A sensitivity analysis was performed to observe the response of the model to perturbations in longitudinal wave velocity up to +/- 10% of the value observed experimentally. ANN was found to be suitable to predict the compressive strength through ultrasonic pulse velocity. This study leads to future research in non-destructive measurements to describe the segregation phenomenon in LWAC. (C) 2018 Elsevier Ltd. All rights reserved.
机译:由于所用集料的密度低,轻质集料混凝土(LWAC)的组分密度不同,因此容易产生偏析。 LWAC中的偏析会引起混凝土性能的巨大差异,从而对其机械性能和耐久性产生负面影响。通过诊断和预测将超声波速度和人工神经网络(ANN)应用于LWAC标本的抗压强度的影响。使用640个实验观察结果来选择最佳的ANN模型。进行敏感性分析以观察模型对纵向波速度扰动的响应,最高可达实验观察值的+/- 10%。 ANN被发现适合通过超声波脉冲速度预测抗压强度。这项研究导致了对非破坏性测量的进一步研究,以描述LWAC中的偏析现象。 (C)2018 Elsevier Ltd.保留所有权利。

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