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A random forest model for inflow prediction at wastewater treatment plants

机译:废水处理厂流入预测随机森林模型

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Influent flow of wastewater treatment plants (WWTPs) is a crucial variable for plant operation and management. In this study, a random forest (RF) model was applied for daily wastewater inflow prediction, and a new probabilistic prediction approach was, for the first time, applied for quantifying the uncertainties associated with wastewater inflow prediction. The RF model uses regression trees to capture the nonlinear relationship between wastewater inflow and various influencing factors, such as weather features and domestic water usage patterns. The proposed model was applied to the daily wastewater inflow prediction for two WWTPs (i. e., Humber and one confidential plant) in Ontario, Canada. For the confidential WWTP, the coefficient of determination (R-2) values for training and testing were 0.971 and 0.722, respectively. The R-2 values at the Humber WWTP were 0.957 and 0.584 for training and testing, respectively. In comparison with other approaches such as the multilayer perceptron neural networks (MLP) models and autoregressive integrated moving average models, the results show that the RF model performs well on predicting inflow. In addition, probabilistic prediction of daily inflow was generated. For the Humber station, 93.56% of the total testing samples fall into its corresponding predicted interval. For the confidential plant, 78 observed values of the total 89 samples fall into its corresponding interval, accounting for 87.64% of the total testing samples. The results show that the probabilistic approach can provide robust decision support for the operation, management, and optimization of WWTPs.
机译:废水处理厂(WWTPS)的流动流动是工厂运营和管理的关键变量。在本研究中,应用了日常废水流入预测的随机森林(RF)模型,并且首次申请了一种新的概率预测方法来定量与废水流入预测相关的不确定性。 RF模型使用回归树来捕获废水流入和各种影响因素之间的非线性关系,例如天气特征和国内水使用模式。拟议的模型应用于加拿大安大略省的两种WWTPS(I.E。,亨伯和一个机密植物)的日常废水流入预测。对于机密WWTP,培训和测试的测定系数(R-2)值分别为0.971和0.722。 Humber WWTP的R-2值分别为0.957和0.584,用于培训和测试。与其他方法(如多层的Perceptron神经网络(MLP)模型和自回归综合移动平均模型相比,结果表明RF模型在预测流入时表现良好。此外,产生了日常流入的概率预测。对于亨伯站,93.56%的总测试样本落入其相应的预测间隔。对于保密工厂,总计89个样本的78个观测值落入其相应的间隔,占总测试样品的87.64%。结果表明,概率方法可以为WWTP的运营,管理和优化提供强大的决策支持。

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