厌氧氨氧化菌
反硝化
亚硝酸盐
环境化学
化学
废水
硝化作用
流出物
污水处理
硝酸盐
制浆造纸工业
氮气
环境工程
反硝化细菌
环境科学
有机化学
工程类
作者
Da Kang,Il Han,Jangho Lee,Kester McCullough,Guangyu Li,Dongqi Wang,Stephanie Klaus,Ping Zheng,V. Srinivasan,Charles Bott,April Z. Gu
标识
DOI:10.1101/2023.03.28.534645
摘要
Abstract Achieving mainstream short-cut nitrogen removal via nitrite has been a carbon and energy-efficient goal which wastewater engineers are dedicated to explore. This study applied a novel pilot-scale A-B-S2EBPR system process integrated with sidestream enhanced biological phosphorus removal) to achieve the nitrite accumulation and downstream anammox for treating municipal wastewater. Nitrite accumulated to 5.5 ± 0.3 mg N/L in the intermittently aerated tanks of B-stage with the nitrite accumulation ratio (NAR) of 79.1 ± 6.5%. The final effluent concentration and removal efficiency of total inorganic nitrogen (TIN) were 4.6 ± 1.8 mg N/L and 84.9 ± 5.6%, respectively. Batch nitrification/denitrification activity tests and functional gene abundance of ammonium oxidizing bacteria (AOB) and nitrite oxidizing bacteria (NOB) suggested that the nitrite accumulation was mostly caused by partial denitrification without NOB- selection. The unique features of S2EBPR (longer anaerobic HRT/SRT, lower ORPs, high and more complex VFAs etc.) seemed to impact the nitrogen microbial communities: the conventional AOB kept at a very low level of 0.13 ± 0.13% during the operation period, and the dominant candidate internal carbon-accumulating heterotrophic genera of Acinetobacter (17.8 ± 15.5)% and Comamonadaceae (6.7 ± 3.4%) were highly enriched. Furthermore, the single-cell Raman spectroscopy-based intracellular polymer analysis revealed the dominate microorganisms that could utilize polyhydroxyalkanoates (PHA) as the potential internal carbon source to drive partial denitrification. This study provides insights and a new direction for implementing the mainstream PdNA short-cut nitrogen removal via incorporating S2EBPR into sustainable A-B process.
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