首页> 外文期刊>Bioresource Technology: Biomass, Bioenergy, Biowastes, Conversion Technologies, Biotransformations, Production Technologies >Quantification of nitrous oxide (N2O) emissions and soluble microbial product (SMP) production by a modified AOB-NOB-N2O-SMP model
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Quantification of nitrous oxide (N2O) emissions and soluble microbial product (SMP) production by a modified AOB-NOB-N2O-SMP model

机译:通过改进的AOB-NOB-N2O-SMP模型定量氧化二氮(N2O)排放和可溶性微生物产品(SMP)的生产

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摘要

A modified AOB-NOB-N2O-SMP model able to quantify nitrous oxide (N2O) emissions and soluble microbial product (SMP) production during wastewater treatment is proposed. The modified AOB-NOB-N2OSMP model takes into account: (1) two-step nitrification by ammonia-oxidizing bacteria (AOB) and nitrite-oxidizing bacteria (NOB), (2) N2O production by AOB denitrification under oxygen-limited conditions and (3) SMP production by microbial growth and endogenous respiration. Validity of the modified model is demonstrated by comparing the simulation results with experimental data from lab-scale sequencing batch reactors (SBRs). To reliably implement the modified model, a model calibration that adjusts model parameters to fit the model outputs to the experimental data is conducted. The results of this study showed that the modeling accuracy of the modified AOB-NOB-N2O-SMP model increases by 19.7% (NH4), 51.0% (NO2), 57.8% (N2O) and 16.7% (SMP) compared to the conventional model which does not consider the two-step nitrification and SMP production by microbial endogenous respiration. (C) 2016 Elsevier Ltd. All rights reserved.
机译:提出了一种改进的AOB-NOB-N2O-SMP模型,其能够在废水处理中量化氧化氮(N2O)排放和可溶性微生物产品(SMP)产生。修饰的AOB-NOB-N2OSMP模型考虑了:(1)通过氨氧化细菌(AOB)和亚硝酸盐氧化细菌(NOB),(2)N2O在氧气限制条件下产生的两步硝化(2)N2O生产(3)SMP通过微生物生长和内源性呼吸产生。通过将模拟结果与来自Lab级测序批量反应器(SBR)的实验数据进行比较来证明修改模型的有效性。为了可靠地实现修改模型,进行了调整模型参数以将模型输出拟合到实验数据的模型校准。该研究的结果表明,与常规相比,改性AOB-NOB-N2O-SMP模型的建模准确度增加了19.7%(NH4),51.0%(NO 2),57.8%(NO 2)和16.7%(SMP)模型不考虑通过微生物内源性呼吸的两步硝化和SMP产生。 (c)2016 Elsevier Ltd.保留所有权利。

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