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Predicting trihalomethane formation in chlorinated waters using multivariate regression and neural networks

机译:使用多元回归和神经网络预测氯化水中三卤甲烷的形成

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Recently, there has been increased interest in modelling disinfection by-products (DBP) in order to better understand and manage the presence of these compounds in drinking water. In this paper, the use of artificial neural networks (ANN) to predict trihalomethane (THM) formation resulting from chlorination bench-scale experiments is investigated and compared with the use of classical multivariate linear regression (MLR). ANN and MLR were developed from three databases which were generated through bench-scale chlorination essays carried out in the US and Canada. A detailed analysis of modelling results shows that for all three databases, ANNs have in general a greater ability than MLRs to predict THM formation for most water quality and chlorination conditions, with the exception of instantaneous THMs (formation immediately following chlorine addition).
机译:最近,人们对模拟消毒副产物(DBP)的兴趣日益增加,以便更好地了解和管理饮用水中这些化合物的存在。在本文中,研究了使用人工神经网络(ANN)预测氯化台规模实验产生的三卤甲烷(THM)的形成,并与经典多元线性回归(MLR)进行了比较。 ANN和MLR由三个数据库开发而成,这三个数据库是通过在美国和加拿大进行的实验室规模氯化论文生成的。对模型结果的详细分析表明,对于所有三个数据库,除了瞬时THM(加氯后立即形成)之外,对于大多数水质和氯化条件,人工神经网络通常比MLR具有更好的预测THM形成的能力。

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