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首页> 外文期刊>Separation and Purification Technology >Denitrification mechanism and artificial neural networks modeling for low-pollution water purification using a denitrification biological filter process
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Denitrification mechanism and artificial neural networks modeling for low-pollution water purification using a denitrification biological filter process

机译:利用脱氮生物滤液过程对低污染水净化的反硝化机理和人工神经网络建模

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摘要

Low-pollution water treatment is an important process for improving surface water quality. In the present study, a denitrification biological filter (DNBF) was used to treat synthetic low-pollution water, representing the typical water present in a heavily polluted urban seasonal river. The feasibility of alkali treated corncob as a denitrification slow-release carbon source was investigated. Furthermore, the performance of DNBF with different media (ceramsite, quartz sand and polypropylene plastics) and operating conditions was studied. The DNBF denitrification mechanism was analyzed and an artificial neural network model was established to predict the water quality of DNBF treated low-pollution water effluent. Results showed that when the alkali treated corncob dosage was 20 g and hydraulic retention time (HRT) was 2 h, the denitrification efficiency of DNBF with ceramsite as the filter medium was highest (>94.7% for nitrate nitrogen and > 85.6% for total nitrogen), with the effluent total nitrogen concentration meeting Class IV of the Environmental Quality Standard for Surface Water (GB 3838-2002, China). The total nitrogen removal efficiency increased with increasing HRT (0.5-2.0 h) and alkali treated corncob dosage (0-20 g). The denitrification rates established for DNBF with different media were ranked in the following order: ceramsite medium DNBF > polypropylene plastic medium DNBF > quartz sand medium DNBF. The relative abundance of denitrifying bacteria was highest (10.07% for quartz sand medium DNBF, 13.92% for polypropylene plastic medium DNBF and 23.13% for ceramsite medium DNBF) in the lower layer of the DNBFs, indicating that denitrifying bacteria are concentrated in the lower layer of the up-flow DNBF. Environmental factors (nitrite nitrogen, nitrate nitrogen, water temperature and pH) were found to affect the DNBF microbial community structure. The established artificial neural network model accurately predicted the effluent nitrogen concentration in DNBF treated low-pollution water. DNBF provides a feasible system for the treatment of heavily polluted urban seasonal rivers, achieving high total nitrogen removal efficiency using a low cost and easy operation method.
机译:低污染水处理是改善地表水水质的重要工艺。在本研究中,反硝化生物滤池(DNBF)被用于处理合成低污染水,代表严重污染的城市季节性河流中的典型水。研究了碱处理玉米芯作为反硝化缓释碳源的可行性。此外,还研究了不同介质(陶粒、石英砂和聚丙烯塑料)和操作条件下的DNBF性能。分析了DNBF脱氮机理,建立了DNBF处理低污染出水水质预测的人工神经网络模型。结果表明,当碱处理玉米芯用量为20g,水力停留时间(HRT)为2h时,以陶粒为过滤介质的DNBF脱氮效率最高(硝态氮>94.7%,总氮>85.6%),出水总氮浓度达到《地表水环境质量标准》(GB 3838-2002)四级。总氮去除率随水力停留时间(0.5-2.0h)和碱处理玉米芯用量(0-20g)的增加而增加。不同培养基对DNBF的脱氮率排序为:陶粒培养基DNBF>聚丙烯塑料培养基DNBF>石英砂培养基DNBF。反硝化细菌的相对丰度在DNBFs的下层最高(石英砂培养基DNBF为10.07%,聚丙烯塑料培养基DNBF为13.92%,陶粒培养基DNBF为23.13%),表明反硝化细菌集中在上流DNBF的下层。环境因素(亚硝酸盐氮、硝酸盐氮、水温和pH)对DNBF微生物群落结构有影响。所建立的人工神经网络模型准确预测了经DNBF处理的低污染水的出水氮浓度。DNBF为严重污染的城市季节性河流的处理提供了一个可行的系统,使用低成本和易于操作的方法实现了高总氮去除效率。

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