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Considering the plug-flow behavior of the gas phase in nitrifying BAF models significantly improves the prediction of N_2O emissions

机译:在硝化BAF模型中考虑气相的活塞流行为可显着改善N_2O排放的预测

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Nitrifying biologically active filters (BAFs) have been found to be high emitters of nitrous oxide (N2O), a powerful greenhouse gas contributing to ozone layer depletion. While recent models have greatly improved our understanding of the triggers of N2O emissions from suspended-growth processes, less is known about N2O emissions from full-scale biofilm processes.Tertiary nitrifying BAFs have been modeled at some occasions but considering strong simplifications on the description of gas-liquid exchanges which are not appropriate for N2O prediction. In this work, a tertiary nitrifying BAF model including the main N2O biological pathways was developed and confronted to full-scale data from Seine Aval, the largest wastewater resource recovery facility in Europe. A mass balance on the gaseous compounds was included in order to correctly describe the N2O gas-liquid partition, thus N2O emissions. Preliminary modifications of the model structure were made to include the gas phase as a compartment of the model, which significantly affected the prediction of nitrification. In particular, considering gas hold-up influenced the prediction of the hydraulic retention time, thus nitrification performances: a 3.5% gas fraction reduced ammonium removal by 13%, as the liquid volume, small in such systems, is highly sensitive to the gas presence. Finally, the value of the volumetric oxygen transfer coefficient was adjusted to successfully predict both nitrification and N2O emissions. (C) 2019 Elsevier Ltd. All rights reserved.
机译:已发现硝化生物活性过滤器(BAF)是一氧化二氮(N2O)的高排放者,一氧化二氮是造成臭氧层耗竭的有力温室气体。尽管最近的模型极大地改善了我们对悬浮生长过程中N2O排放触发因素的理解,但对全尺寸生物膜过程中N2O排放的了解却很少。在某些情况下,对第三级硝化BAF进行了建模,但考虑到以下方面的简化方法:不适用于N2O预测的气液交换。在这项工作中,开发了包括主要N2O生物途径的三次硝化BAF模型,并将其与欧洲最大的废水资源回收设施Seine Aval的全面数据相对。包括气态化合物的质量平衡,以便正确描述N2O气液分配,从而描述N2O排放。对模型结构进行了初步修改,将气相作为模型的一部分,这极大地影响了硝化作用的预测。特别是考虑到气体滞留会影响水力停留时间的预测,因此会产生硝化性能:3.5%的气体馏分将铵的去除量降低了13%,因为此类系统中的液体量很小,对气体的存在高度敏感。最后,调整体积氧传递系数的值,以成功预测硝化作用和N2O排放。 (C)2019 Elsevier Ltd.保留所有权利。

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