首页> 外文会议>Future Technologies Conference >Development of Extreme Learning Machine Radial Basis Function Neural Network Models to Predict Residual Aluminum for Water Treatment Plants
【24h】

Development of Extreme Learning Machine Radial Basis Function Neural Network Models to Predict Residual Aluminum for Water Treatment Plants

机译:极端学习机的发展径向基函数神经网络模型预测水处理厂残留铝

获取原文

摘要

Two sets of input parameters were employed to develop Extreme Learning Machine Radial Basis Function (ELM-RBF) models predicting residual aluminum, in order to facilitate parametric analysis of reported physical and chemical phenomena relating to the effect of alum dosage, raw water (RW) turbidity and RW color on residual aluminum concentration. RW turbidity was identified as the dominant variable affecting the distribution of the multivariate data, condensed into two principal components using principal component analysis. Thus two sets of models were developed based on the RW turbidity value: low turbidity models and high turbidity models. The performance of all models was satisfactory, with test correlation coefficients exceeding 0.85. The shapes of the plots of the parametric analysis were satisfactory and were in line with reported phenomena. However, the numerical accuracy of the plots obtained by the parametric analysis was poor. It was noted that using data with a wider range of values for the dominant variable (RW turbidity) helped improve the parametric plots.
机译:采用两组输入参数来开发预测残留铝的极端学习机径向基功能(ELM-RBF)模型,以便于参数分析报告的物理和化学现象与明矾剂量,原水(RW)的影响有关的物理和化学现象残留铝浓度上的浊度和rw颜色。 RW浊度被鉴定为影响多元数据分布的主要变量,使用主成分分析冷凝成两个主成分。因此,基于RW浊度值开发了两组型号:低浊度型号和高浊度模型。所有型号的性能令人满意,测试相关系数超过0.85。参数分析的曲线曲线的形状令人满意,并符合报告的现象。然而,参数分析所获得的图的数值准确性差。有人指出,使用具有更广泛值的主导变量(RW浊度)的数据有助于改善参数块。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号