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Kohonen self-organising map (KSOM) extracted features for enhancing MLP-ANN prediction models of BOD_5

机译:Kohonen自组织地图(KSOM)提取的特征,用于增强BOD_5的MLP-ANN预测模型

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This paper presents the results of developing a model to predict the concentrations of biological oxygen demand (BOD5), in the effluent of the primary clarifier of an activated sludge wastewater treatment plant, using other easily measurable water quality parameters The model is based on the Kohonen self-organising map (KSOM) and multi-layered perception artificial neural networks (MLP-ANN) The KSOM was used to extract the features of the measured data and to deal with the effects of noise and missing values. The best map units of the measurement vectors over the KSOM were used as inputs to the MLP-ANN to reduce the effects of noise and uncertainty in the measurement data, and to replace the missing elements in these measurements The results of the KSOM-ANN modelling strategy were found to be better than those obtained by the MLP-ANN trained using the raw measurement data.
机译:本文介绍了开发模型以预测生物需氧量(BoD5)的浓度,在活性污泥废水处理厂的主要澄清器的流出物中,使用其他易于测量的水质参数,该模型基于Kohonen自组织地图(KSOM)和多层感知人工神经网络(MLP-ANN)用于提取测量数据的特征并处理噪声和缺失值的影响。在KSOM上的最佳地图单元用作MLP-ANN的输入,以减少噪声和不确定性在测量数据中的影响,并在这些测量中替换缺失的元件的ksom-ANN建模结果发现策略比使用原始测量数据训练的MLP-ANN获得的策略更好。

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