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Prediction of Tension Softening Curve in Concrete Using Artificial Neural Networks

机译:利用人工神经网络预测混凝土中的张力软化曲线

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Knowledge of the tension softening process of concrete is essential to understand fracture mechanism, further to analyze fracture behaviour, and further to evaluate properties of concrete. For the last eight years, many different tests on uniaxial tension with elimination of secondary flexure were performed in Tohoku Institute of Technology. The paper is dedicated to predict tension softening curve of concrete by using artificial neural networks (ANNs) based on experimental data of five different mixtures of concrete (including High Performance Concrete). It is an advantage to predict a proper tension softening curve without performing uniaxial tension tests. Several artificial neural networks with different architectures (with various hidden neurons and layers) were studied using software - Statistica Neural Network. In order to evaluate the prediction accuracy, tension softening curve and other fracture parameters were predicted for each mix from the other four mixes and compared with the omitted data of the relevant mix. High accuracy was obtained in the all predicted tension softening curves and the fracture parameters were also well predicted.
机译:了解混凝土的张力软化过程对于了解骨折机制至关重要,进一步分析骨折行为,进一步评价混凝土的性能。在过去的八年里,在东北理工学院进行了许多不同的对消除二次弯曲的单轴张力的测试。本文旨在通过使用人工神经网络(ANN)基于五种不同混凝土混合物(包括高性能混凝土)的实验数据来预测混凝土张力软化曲线。在不进行单轴张力测试的情况下预测适当的张力软化曲线是有利的。使用软件 - Statistica神经网络研究了具有不同架构的几种具有不同架构(具有各种隐藏神经元和层)的人工神经网络。为了评估预测精度,预测来自其他四个混合物的每个混合物的张力软化曲线和其他裂缝参数,并与相关混合的省略数据进行比较。在所有预测的张力软化曲线中获得了高精度,并且裂缝参数也得到了很好的预测。

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