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基于人工神经网络的空化水动力过程建模:生物质预处理和废水处理。

ANN based modelling of hydrodynamic cavitation processes: Biomass pre-treatment and wastewater treatment.

机构信息

Hollyheath, 14 Derryvolgie Avenue, Belfast BT9 6FB Multiphase Reactors & Intensification Group (mRING), Ireland.

School of Chemistry and Chemical Engineering, Queen's University Belfast, Belfast BT9 5AG, Northern Ireland, UK.

出版信息

Ultrason Sonochem. 2021 Apr;72:105428. doi: 10.1016/j.ultsonch.2020.105428. Epub 2020 Dec 28.

Abstract

We have developed artificial neural network (ANN) based models for simulating two application examples of hydrodynamic cavitation (HC) namely, biomass pre-treatment to enhance biogas and degradation of organic pollutants in water. The first case reports data on influence of number of passes through HC reactor on bio-methane generation from bagasse. The second case reports data on influence of HC reactor scale on degradation of dichloroaniline (DCA). Similar to most of the HC based applications, the availability of experimental data for these two applications is rather limited. In this work a systematic methodology for developing ANN model is presented. The models were shown to describe the experimental data very well. The ANN models were then evaluated for their ability to interpolate and extrapolate. Despite the limited data, the ANN models were able to simulate and interpolate the data for two very different and complex HC applications very well. The extrapolated results of biomethane generation in terms of number of passes were consistent with the intuitive understanding. The extrapolated results in terms of elapsed time were however not consistent with the intuitive understanding. The ANN model was able to generate intuitively consistent extrapolated results for degradation of DCA in terms of number of passes as well as scale of HC reactor. The results will be useful for developing quantitative models of complex HC applications.

摘要

我们已经开发了基于人工神经网络(ANN)的模型,用于模拟两种水动力空化(HC)的应用实例,即生物质预处理以提高沼气产量和水中有机污染物的降解。第一个案例报告了通过 HC 反应器的次数对甘蔗渣生物甲烷生成的影响的数据。第二个案例报告了 HC 反应器规模对二氯苯胺(DCA)降解的影响的数据。与大多数基于 HC 的应用一样,这两个应用的实验数据可用性相当有限。在这项工作中,提出了一种用于开发 ANN 模型的系统方法。结果表明,这些模型能够很好地描述实验数据。然后,对 ANN 模型进行了内插和外推能力的评估。尽管数据有限,但 ANN 模型仍能够很好地模拟和内插两个非常不同且复杂的 HC 应用的数据。在经过的次数方面,生物甲烷生成的外推结果与直观理解一致。然而,在经过的时间方面,外推结果与直观理解不一致。ANN 模型能够根据经过的次数和 HC 反应器的规模,生成 DCA 降解方面直观一致的外推结果。这些结果将有助于开发复杂 HC 应用的定量模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4f5a/7803855/ff693190ea68/gr1.jpg

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