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Predicting RO/NF water quality by modified solution diffusion model and artificial neural networks

机译:通过改进的溶液扩散模型和人工神经网络预测RO / NF水质

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Membrane solute mass transfer is affected by physical-chemical properties of membrane films, solvent (water) and solutes. Existing mechanistic or empirical models that predict finished water quality from a diffusion controlled membrane can be significantly improved. Modelling membrane solute mass transfer by diffusion solution model is generally restricted to developing specific solute mass transfer coefficients that are site and stage specific. A modified solution diffusion model and two artificial neural network models have been developed for modelling diffusion controlled membrane mass transfer using stage specific solute MTCs. These models compensate for the effects of system flux, recovery and feed water quality on solute MTC and predict more accurately than existing models. (c) 2005 Elsevier B.V. All rights reserved.
机译:膜溶质的传质受膜,溶剂(水)和溶质的物理化学性质影响。可以大大改善现有的通过扩散控制膜预测最终水质的机制或经验模型。通过扩散溶液模型对膜溶质传质建模通常仅限于开发特定的溶质传质系数,这些系数是特定于位点和阶段的。已开发出一种改良的溶液扩散模型和两个人工神经网络模型,用于使用阶段特有的溶质MTC来模拟扩散控制的膜传质。这些模型补偿了系统通量,回收率和给水水质对溶质MTC的影响,并且比现有模型更准确地预测。 (c)2005 Elsevier B.V.保留所有权利。

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