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Influences of model structure and calibration data size on predicting chlorine residuals in water storage tanks

机译:模型结构和校准数据大小对预测储水罐中氯残留量的影响

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This study evaluated the influences of model structure and calibration data size on the modelling performance for the prediction of chlorine residuals in household drinking water storage tanks. The tank models, which consisted of two modules, i.e., hydraulic mixing and water quality modelling processes, were evaluated under identical calibration conditions. The hydraulic mixing modelling processes investigated included the continuously stirred tank reactor (CSTR) and multi-compartment (MC) methods, and the water quality modelling processes included first order (FO), single-reactant second order (SRSO), and variable reaction rate coefficients (VRRC) second order chlorine decay kinetics. Different combinations of these hydraulic mixing and water quality methods formed six tank models. Results show that by applying the same calibration datasets, the tank models that included the MC method for modelling the hydraulic mixing provided better predictions compared to the CSTR method. In terms of water quality modelling, VRRC kinetics showed better predictive abilities compared to FO and SRSO kinetics. It was also found that the overall tank model performance could be substantially improved when a proper method was chosen for the simulation of hydraulic mixing, i.e., the accuracy of the hydraulic mixing modelling plays a critical role in the accuracy of the tank model. Advances in water quality modelling improve the calibration process, i.e., the size of the datasets used for calibration could be reduced when a suitable kinetics method was applied. Although the accuracies of all six models increased with increasing calibration dataset size, the tank model that consisted of the MC and VRRC methods was the most suitable of the tank models as it could satisfactorily predict chlorine residuals in household tanks by using invariant parameters calibrated against the minimum dataset size.
机译:这项研究评估了模型结构和校准数据大小对建模性能的影响,以预测家用饮用水储罐中的氯残留量。在相同的校准条件下评估了由两个模块组成的水箱模型,即水力混合和水质建模过程。研究的水力混合建模过程包括连续搅拌釜反应器(CSTR)和多室(MC)方法,水质建模过程包括一阶(FO),单反应器二阶(SRSO)和可变反应速率系数(VRRC)二阶氯衰减动力学。这些液压混合和水质方法的不同组合形成了六个水箱模型。结果表明,与CSTR方法相比,通过应用相同的校准数据集,包括MC方法对水力混合建模的储罐模型提供了更好的预测。在水质建模方面,与FO和SRSO动力学相比,VRRC动力学表现出更好的预测能力。还发现,当选择适当的方法来模拟水力混合时,整体水箱模型的性能可以大大提高,即水力混合模型的精度在水箱模型的精度中起关键作用。水质建模的进步改善了校准过程,即,当采用合适的动力学方法时,可减少用于校准的数据集的大小。尽管所有六个模型的精度都随着校准数据集大小的增加而增加,但由MC和VRRC方法组成的储罐模型最适合于储罐模型,因为它可以通过使用针对该储罐进行校准的不变参数来令人满意地预测家用储罐中的氯残留量。最小数据集大小。

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