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Modeling NOM removal by softening in a surface water treatment plant

机译:模拟地表水处理厂中通过软化去除NOM

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Phenomenological models and hybrid phenomenological-chemometric models were developed to predict natural organic matter (NOM) removal based on the real water treatment data from the city of Minneapolis over a 3 year period. The analysis of the modeling results showed that the phenomenological model was able to capture the major variations of NOM removal but it tended to over predict the NOM removal in independent data sets. These results could be significantly improved by the hybrid model, which was less biased and much more accurate than the phenomenological model. The phenomenological model parameters showed low statistical confidence because the available data, collected in real water treatment conditions, was not sufficiently informative to identify the complex model structure. By comparison, the hybrid modeling method enabled a more reliable discrimination of the most important factors affecting NOM removal. The final hybrid model was implemented in an Excel spreadsheet and can be easily used for NOM removal prediction and the control of chemical dosing.
机译:基于3年期明尼阿波利斯市的真实水处理数据,开发了现象学模型和混合现象学化学计量模型来预测自然有机物(NOM)的去除。对建模结果的分析表明,现象学模型能够捕获NOM去除的主要变化,但是它倾向于过度预测独立数据集中的NOM去除。这些结果可以通过混合模型得到显着改善,该混合模型比现象模型具有更少的偏倚和更高的准确性。现象学模型参数显示出较低的统计置信度,因为在实际水处理条件下收集的可用数据不足以提供识别复杂模型结构的信息。相比之下,混合建模方法可以更可靠地区分影响NOM去除的最重要因素。最终的混合模型在Excel电子表格中实现,可轻松用于NOM去除预测和化学剂量控制。

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