首页> 外文会议>International Conference on Theory and Application of Soft Computing, Computing with Words and Perceptions >Investigations on the Influence of Variations in Hidden Neurons and Training Data Percentage on the Efficiency of Concrete Carbonation Depth Prediction with ANN
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Investigations on the Influence of Variations in Hidden Neurons and Training Data Percentage on the Efficiency of Concrete Carbonation Depth Prediction with ANN

机译:隐藏神经元变异对培养数据百分比对混凝土碳化深度预测效率影响的研究

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Concrete is undoubtedly one of the most popular construction materials. Carbonation is a well-known concrete durability problem that may negatively affect the performance of reinforced concrete buildings. In this study, efficient prediction of concrete carbonation depth was targetted by employing artificial neural networks with by One-step Secant method of optimization, as an alternative to conventionally used Levenberg-Marquardt algorithm. The effect of varying hidden neuron values and varying train:test data distribution on the evolution of network performance was aimed to be investigated in a sensitive and systematical way, as the scope of this study. Network training was carried out with combinations of 10 different hidden neurons and 11 data distribution ratios. For the task of predicting concrete carbonation depth as the output, the highest coefficient of correlation (R) obtained was 0.99. Results have shown that the variations of training dataset percentage within the range of 30-55% yielded a more significant improvement in the R-value than it is observed within the range of 60-80%. It was also observed that the variation of hidden neurons between the values 5-25 yielded relatively less significant changes on the prediction of accuracy, both in terms of R and MSE, for the range of training data percentages between 60-80%.
机译:混凝土无疑是最受欢迎的建筑材料之一。碳酸化是一种众所周知的具体耐久性问题,可能对钢筋混凝土建筑物的性能产生负面影响。在该研究中,通过使用一步的优化方法采用人工神经网络的人工神经网络来瞄准混凝土碳化深度的有效预测,作为常规使用的Levenberg-Marquardt算法的替代方案。不同隐藏的神经元价值和不同列车的效果:测试数据分布对网络性能的演变的旨在以敏感和系统的方式调查,作为本研究的范围。通过10种不同的隐性神经元和11个数据分配比例进行网络训练。对于预测混凝土碳化深度作为输出的任务,所获得的最高相关系数(R)为0.99。结果表明,训练数据集比范围在30-55%范围内的变化产生的R值更显着改善,而不是观察到的范围在60-80%范围内。还观察到,在R和MSE方面,价值5-25之间的隐性神经元的变化产生了对准确性的预测相对较小的变化,这对于培训数据百分比范围为60-80%。

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