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Numerical modeling of nitrogen removal through simultaneous nitritation, anammox and denitrification processes in biofilters.

机译:在生物滤池中通过同时硝化,厌氧氨化和反硝化过程脱氮的数值模型。

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摘要

Two process-based models were developed to predict nitrogen removal in biofilters. The first model simulated simultaneous nitritation and anammox (SNA) process in two marble chip biofilters designed to couple nitritation and anammox for nitrogen removal from organic-free, ammonium-rich wastewater. This model was the first attempt to simulate SNA in biofilters. Modeling showed that anammox contributed 34.8% of ammonium removal, supporting the design purpose of enhancing the coexistence of anammox bacteria and aerobic ammonium oxidizing bacteria. In order to achieve total inorganic nitrogen (TIN) removal, simultaneous nitritation, anammox and denitrification (SNAD) was introduced to a marble-slag biofilter for treatment of dairy wastewater. The second model attempted to simulate SNAD. Anammox and denitrification contributed 80.4% and 19.6% of TIN removal, respectively, supporting that the biofilter successfully enhanced TIN removal by employing SNAD. The proposed models are useful tools for evaluating and designing ecological treatment systems.
机译:开发了两个基于过程的模型来预测生物滤池中的氮去除量。第一个模型在两个大理石碎片生物滤池中模拟了同时硝化和厌氧氨(SNA)工艺,该滤池设计为将硝化和厌氧氨耦合以从无有机,富含铵的废水中脱氮。该模型是在生物过滤器中模拟SNA的首次尝试。建模表明,厌氧菌对氨去除的贡献率为34.8%,支持了增强厌氧菌和需氧铵氧化菌共存的设计目的。为了实现总无机氮(TIN)的去除,将同步硝化,厌氧氨化和反硝化(SNAD)引入大理石炉渣生物滤池中以处理乳品废水。第二个模型试图模拟SNAD。厌氧氨氧化法和反硝化作用分别占TIN去除量的80.4%和19.6%,这表明生物滤池通过使用SNAD成功地提高了TIN去除率。所提出的模型是评估和设计生态处理系统的有用工具。

著录项

  • 作者

    Shi, Shun.;

  • 作者单位

    State University of New York College of Environmental Science and Forestry.;

  • 授予单位 State University of New York College of Environmental Science and Forestry.;
  • 学科 Environmental engineering.;Water resources management.
  • 学位 M.S.
  • 年度 2012
  • 页码 84 p.
  • 总页数 84
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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