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Predicting total trihalomethane formation in finished water using artificial neural networks

机译:使用人工神经网络预测最终水中总三卤甲烷的形成

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This paper reports on the application of artificial neural network (ANN) techniques for predicting the concentration of trihalomethanes (THMs) in finished water at the E.L. Smith Water Treatment Plant (WTP) in Edmonton, Alberta, Canada. The formation of THMs in finished water involves many complex chemical reactions and interactions that are difficult to model using conventional methods. The formation of THMs has been found to be correlated to raw and treated water quality characteristics such as colour, pH, and temperature and chemical addition such as chlorine, alum, and powder activated carbon (PAC). Three models were derived using raw water, post clarification water, and a combination of raw and post clarification water parameter inputs. The model that most successfully predicted the concentration of THMs in finished water is the model that uses clarifier effluent parameter inputs. This model can be used at the E.L. Smith WTP for early detection of potentially high THM concentrations in finished water and gives plant operators enough advanced warning to reduce THM precursors. With an adequate understanding of water treatment plant processes and THM formation potential it will be fairly easy for any water treatment facility, which has a few years of historical plant data, to develop its own ANN model for predicting the formation of THM in finished water.
机译:本文报道了人工神经网络(ANN)技术在预测E.L.成品水中三卤甲烷(THMs)浓度中的应用。加拿大艾伯塔省埃德蒙顿的史密斯水处理厂(WTP)。最终水中THM的形成涉及许多复杂的化学反应和相互作用,而使用常规方法很难建模。已发现THM的形成与原水和处理后的水质特征(例如颜色,pH和温度)以及化学添加物(例如氯,明矾和粉末活性炭(PAC))相关。使用原水,澄清后水,以及澄清后和原始水参数输入的组合得出了三个模型。最成功地预测成品水中THM浓度的模型是使用澄清池废水参数输入的模型。该模型可以在E.L. Smith WTP可及早发现成品水中潜在的高THM浓度,并向工厂操作员提供足够的预警,以减少THM前体。充分了解水处理厂的过程和THM的形成潜力后,对于拥有多年工厂历史数据的任何水处理设施来说,开发自己的ANN模型以预测成品水中THM的形成将相当容易。

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