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Prediction of total concentration for spherical and tear shape drops by using neural network

机译:用神经网络预测球形和泪状液滴的总浓度

摘要

In this study, the development of an alternative approach based on the Artificial Intelligent technique called Artificial Neural Network (ANN) was carried out. This report presents a new application of ANN techniques to the modeling of prediction total concentration of drops in the Rotating Disc Contactor Column (RDC). The ANN was trained with the simulated data based on spherical and tear-shaped drops, which consider ten classes volume of drops. The comparison result between Neural Network output and Mathematical Model output is presented. With 4 hidden nodes, the Neural Network models are able to generate the smallest MSE for each ten classes volume of drops. Then the neural network model is then being applied to the combination for all shape drops, which are spherical and tear shape drops as the inputs. The Neural Network models are able to predict 400 simulated data for combination spherical and tear shape drops with MSE error value 68482.6?E. The results with the smallest MSE presented in this paper shows that the Neural Network Model works successfully in prediction total concentration of multiple shape drops in ten classes volumes.
机译:在这项研究中,开发了一种基于人工智能技术的替代方法,称为人工神经网络(ANN)。本报告介绍了ANN技术在旋转圆盘接触器塔(RDC)中预测液滴总浓度的建模中的新应用。通过基于球形和泪状液滴的模拟数据对ANN进行了训练,其中考虑了十类液滴的体积。给出了神经网络输出和数学模型输出之间的比较结果。通过4个隐藏节点,神经网络模型能够为每十个类的液滴量生成最小的MSE。然后将神经网络模型应用于所有形状滴的组合,这些形状滴是球形的,并且泪滴为输入。神经网络模型能够预测400个球状和泪滴状液滴组合的模拟数据,MSE误差值为68482.6?E。本文提出的最小MSE结果表明,神经网络模型成功地预测了十个类体积中多个形状滴的总浓度。

著录项

  • 作者

    Saharun Norhusna;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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