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Advanced machine learning application for odor and corrosion control at a water resource recovery facility

机译:水资源恢复设施的气味和腐蚀控制的先进机器学习应用

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The objective of this study was to develop a machine learning (ML) application to determine the optimal dosage of sodium hypochlorite (NaOCl) to curtail corrosion and odor by H2S in the headworks of a water resource recovery facility (WRRF) without overly consuming volatile fatty acids (VFAs) that are essential for the enhanced biological phosphorus removal. Given the highly diverse datasets available, three subproblems were formulated, and three cascaded ML modules were developed accordingly. The final ML models, chosen based on performance, were able to predict various targeted variables. More specifically, in Module 1, a recurrent neural network (RNN) was designed to predict wastewater characteristics. In Module 2, a random forest (RF) classifier and a support vector machine (SVM) classifier were built with the information from Module 1 along with other datasets to predict the concentrations of VFAs and H2S, respectively. Finally, in Module 3, with the information obtained from Module 2, another RF classifier was developed to predict NaOCl dosage to reduce H2S but keeping VFAs within the target range. These efforts are relevant and informative for WRRFs that are considering developing Intelligent Water Systems to predict the wastewater characteristics to make operational improvements. Practitioner Points A recurrent neural network (RNN) using long short-term memory (LSTM) successfully predicted influent wastewater parameters. A support vector machine classifier predicted hydrogen sulfide (H2S) with 97.6% accuracy. The concentration of VFAs, an important parameter in EBPR, was predicted using a random forest classifier with 93.4% accuracy. The optimal NaOCl dosage for H2S control can be predicted with a random forest classifier using H2S, VFAs, and flow.
机译:本研究的目的是开发一种机器学习(ML)申请,以确定次氯酸钠(NaOCL)的最佳剂量,以在水资源回收设施(WRRF)的讲台中通过H2S进行腐蚀和气味而不会过度消耗挥发性脂肪对于增强的生物磷去除至关重要的酸(VFA)。鉴于可用的高度多样化数据集,配制了三个子问题,并相应地开发了三个级联ML模块。基于性能的最终ML模型能够预测各种目标变量。更具体地,在模块1中,设计了经常性神经网络(RNN)以预测废水特性。在模块2中,随着来自模块1的信息以及其他数据集的信息,建立了随机森林(RF)分类器和支持向量机(SVM)分类器以分别预测VFA和H2S的浓度。最后,在模块3中,利用从模块2获得的信息,开发了另一RF分类器以预测NaoCl剂量以减少H2S,但保持目标范围内的VFA。这些努力与WRRF有关和信息,正在考虑开发智能水系统以预测污水的特点以进行操作改进。从业者使用长短短期记忆(LSTM)指出经常性神经网络(RNN)成功预测了影响的流水废水参数。支持向量机分类器预测硫化氢(H2S),精度为97.6%。使用具有93.4%的准确度的随机林分类器预测VFA的浓度,是EBPR中的重要参数。可以使用H2S,VFA和流量随机林分类器预测H 2 S对照的最佳NaoCl剂量。

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