首页> 外文会议>Computational Intelligence and Security, 2009. CIS '09 >Comparison of Extreme Learning Machine with Support Vector Regression for Reservoir Permeability Prediction
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Comparison of Extreme Learning Machine with Support Vector Regression for Reservoir Permeability Prediction

机译:支持向量机的极限学习机在储层渗透率预测中的比较

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Extreme Learning Machine (ELM) is an easy-to use and effective learning algorithm of single-hidden layer feed-forward neural networks (SLFNs). The classical learning algorithm in neural network, e. g. Back Propagation, requires setting several user-defined parameters and may get into local minimum. However, ELM only requires setting the number of hidden neurons and the activation function. It does not require adjusting the input weights and hidden layer biases during the implementation of the algorithm, and it produces only one optimal solution. Therefore, ELM has the advantages of fast learning speed and good generalization performance. In this paper, ELM is introduced in predicting reservoir permeability. By comparing to SVM, we analyze its feasibility and advantages in reservoir permeability prediction. The experimental results show that ELM has similar accuracy compared to SVR, but it has obvious advantages in parameter selection and learning speed.
机译:极限学习机(ELM)是一种易于使用且有效的单隐藏层前馈神经网络(SLFN)学习算法。神经网络中的经典学习算法,例如。 G。反向传播,需要设置几个用户定义的参数,并且可能会达到局部最小值。但是,ELM仅需要设置隐藏神经元的数量和激活功能。在算法的实现过程中,它不需要调整输入权重和隐藏层偏置,并且它仅产生一种最佳解决方案。因此,ELM具有学习速度快和泛化性能好的优点。在本文中,ELM被引入到预测储层渗透率中。通过与支持向量机的比较,我们分析了其在储层渗透率预测中的可行性和优势。实验结果表明,ELM的精度与SVR相似,但在参数选择和学习速度上具有明显的优势。

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