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Homogenization theory with multiscale perturbation analysis for supervised learning of complex adsorption-desorption process in porous-media systems

机译:均质化理论与多尺度扰动分析在多孔介质系统复杂吸附-解吸过程的监督学习中

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Engineered and natural adsorbers, which undergo both adsorption and desorption mechanisms during operations, are dominant treatment technologies to remove difficult contaminants from influent sources to safeguard supplies of potable water to local communities. The slow net adsorption, i.e. adsorption rate greater than desorption rate, of contaminants over long periods of operational time contributes to chemical clogging inside an operating adsorber which complexity continues to be difficult for engineers to quantify, particularly on the adsorption and desorption processes coexisting during their near-equilibrium concentration state which builds towards its exhaustion stage for maintenance purpose.In this study, we leverage on the homogenization theory with the multiscale perturbation analysis to develop an engineering model which encapsulates the complex adsorption-desorption mechanics in adsorbers. The desired model contributes towards the primary objective of having the required capabilities to perform predictive maintenance of adsorbers to garner operational benefits, especially for large-scale systems. The hybrid analytical approach systematically derives a unique homogenized representation which contains an unknown reaction rate parameter responsible for the adsorption-desorption processes taking place over a significantly long period of time leading to the adsorber's exhaustion stage. Dimensional analysis is then carried out to express the reaction rate parameter as a function of the known physical parameters to predict the transient variations in an adsorber's effluent concentration during its gradual build-up towards exhaustion.Measured data from both the literature and our own adsorber experimental runs are then acquired to train and validate the model's predictive capability, via supervised learning methods, which yields an average error deviation of 10 % or less for the optimal training period determined. Finally, we demonstrate quantitatively how the model can be useful to engineers to estimate: (a) the timing for an operating adsorber to reach its exhaustion stage; and (b) the associated Damkohler number, adsorption and desorption coefficients and etc., responsible for the concerned adsorber's effluent concentration profile for the varying types of contaminants removed. (C) 2020 Elsevier B.V. All rights reserved.
机译:工程和天然吸附器在运行过程中会同时经历吸附和解吸机制,是一种主要的处理技术,可以从污水源中去除困难的污染物,以保障当地社区的饮用水供应。在长时间的运行时间内,污染物的缓慢净吸附(即吸附速率大于解吸速率)会导致运行中的吸附器内部发生化学堵塞,对于工程师而言,复杂性仍然难以量化,尤其是在吸附过程中共存的吸附和解吸过程中本研究中,我们利用均质化理论和多尺度扰动分析,建立了一个工程模型,该模型封装了吸附器中复杂的吸附-解吸机理。所需的模型有助于实现以下主要目标:具有所需的执行吸附器预测维护的能力,以期获得运行收益,尤其是对于大型系统。混合分析方法系统地得出唯一的均质化表示形式,其中包含未知的反应速率参数,该参数负责在相当长的一段时间内发生的吸附-解吸过程,从而导致吸附器的排气阶段。然后进行尺寸分析,将反应速率参数表示为已知物理参数的函数,以预测在吸附器逐渐积累至耗尽期间吸附器流出物浓度的瞬时变化。来自文献和我们自己的吸附器实验的测量数据然后,通过有监督的学习方法来获取运行次数,以训练和验证模型的预测能力,在确定的最佳训练期间,其平均误差偏差为10%或更小。最后,我们定量地证明了该模型如何对工程师进行评估:(a)运行中的吸附器达到其排气阶段的时间; (b)相关的达姆克勒数,吸附系数和解吸系数等,负责有关所除去的各种污染物的吸附器的废水浓度曲线。 (C)2020 Elsevier B.V.保留所有权利。

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