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Novel approaches for predicting efficiency in helically coiled tube flocculators using regression models and artificial neural networks

机译:利用回归模型和人工神经网络预测螺旋盘管絮凝物效率的新方法

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摘要

In this paper, prediction models for turbidity removal efficiency (TRE) in helically coiled tube flocculators (HCTFs) are presented. The TRE was determined by physically modelling a compact, high-performance and low detention time clarification system composed of a HCTF coupled to a decantation system. The values of hydrodynamic representative parameters of the flow were determined by CFD modelling. Eighty-four different configurations of HCTFs were evaluated. Multiple linearon-linear regression and artificial neural network analyses were performed. A determination coefficient (R-2) of 0.81 was obtained using multiple linear regression with the geometric and hydraulic parameters. In this model, the root mean squared error (RMSE) was 3.29%. Adding hydrodynamic parameters and using the artificial neural networks, R-2 reaches 0.96 and RMSE decay to 1.58%. These results indicate that the use of effective efficiency prediction models can be helpful in the design of new flocculation units and for the improvement of existing ones.
机译:本文提出了螺旋盘绕管絮凝剂(HCTFS)中浊度去除效率(TRE)的预测模型。通过物理建模紧凑,高性能和低滞留时间澄清系统来确定,由HCTF组成,该HCTF耦合到倾析系统。通过CFD建模确定流动的流体动力学代表参数的值。评估八十四种不同的HCTF配置。进行多个线性/非线性回归和人工神经网络分析。使用与几何和液压参数的多元线性回归获得0.81的确定系数(R-2)。在该模型中,根均方误差(RMSE)为3.29%。添加流体动力学参数并使用人工神经网络,R-2达到0.96,RMSE衰减至1.58%。这些结果表明,使用有效效率预测模型可以有助于设计新的絮凝单元和改进现有絮凝下的设计。

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