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Neural networks provide superior description of Giardia lamblia inactivation by free chlorine

机译:神经网络可以很好地描述贾第鞭毛虫对游离氯的灭活作用

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Use of conventional models to describe data on microbial inactivation during disinfection suffers from limitations with respect to flexibility and direct quantitative incorporation of water quality variables. This paper develops an approach to analysis of such data using neural networks (NNs). Using the data on free chlorine inactivation of Giardia lamblia previously reported, it was found that the use of an NN with a single hidden layer and four hidden neurons provided a superior (better) fit to the data with a reduced number of model parameters when compared to the fitting of this data using a conventional approach. Therefore, the use of NN models should be considered in the future assessment of microbial inactivation during disinfection. Incorporation of additional facets of the disinfection process, such a disinfectant decay, needs to be considered in subsequent development of this approach.
机译:使用常规模型描述有关消毒过程中微生物灭活的数据受到灵活性和直接定量纳入水质变量的限制。本文开发了一种使用神经网络(NN)分析此类数据的方法。使用先前报道的贾第鞭毛虫的游离氯灭活数据,发现与单个隐蔽层和四个隐蔽神经元一起使用NN可以更好地(更好)地拟合数据,与模型参数相比,数量减少使用常规方法来拟合此数据。因此,在未来的消毒过程中微生物灭活的评估中应考虑使用NN模型。在此方法的后续开发中,需要考虑将消毒过程的其他方面(例如消毒剂的腐烂)结合在一起。

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