厌氧氨氧化菌
混合(物理)
体积热力学
体积流量
强度(物理)
环境科学
工艺工程
环境工程
计算机科学
化学
机械
工程类
热力学
氮气
物理
反硝化细菌
有机化学
量子力学
反硝化
作者
Bohua Ji,Sin‐Chi Kuok,Tianwei Hao
标识
DOI:10.1016/j.watres.2024.122344
摘要
Extensive studies on improving anammox performance have taken place for decades with particular focuses on its operational and environmental factors, but such parameter-based optimization is difficult, because of the sheer number of possible combinations and multidimensional arrays of these factors. Utilizing machine-learning algorithm and published anammox data, Bayesian nonparametric general regression (BNGR) was applied to identify the possible governing variable(s) from among 11 operating and environmental parameters: reactor type, mixing type, working volume, hydraulic retention time, temperature, influent pH, nitrite, ammonium, nitrate concentration, nitrogen loading rate, and organic concentration. The results showed that working volume is a key but oft-overlooked governing parameter. By integrating the BNGR findings with computational fluid dynamics simulation, which assessed mixing properties, it became feasible to conclude that working volume and mixing intensity co-regulated flow fields in reactors and had a significant influence on anammox performance. Furthermore, this study experimentally validated how mixing intensity affected performance, and specific input power (x), a parameter that conjugates both working volume and mixing intensity, was used to establish the relationship with ammonium removal rate (NH
科研通智能强力驱动
Strongly Powered by AbleSci AI