全规模垃圾填埋场渗滤液处理厂脱氮工艺升级过程中不同大小絮凝物聚集体中的微生物群落动态

IF 9.7 1区 环境科学与生态学 Q1 AGRICULTURAL ENGINEERING Bioresource Technology Pub Date : 2024-09-12 DOI:10.1016/j.biortech.2024.131484
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引用次数: 0

摘要

提升工艺以减少可生物降解有机物的添加量,对于处理污染物浓度较高的垃圾填埋场渗滤液、减少碳排放至关重要。活性污泥法中的集料粒度会影响污染物的去除和污泥/水的分离。本研究利用 16S rRNA 基因测序技术,研究了在全规模垃圾填埋场渗滤液处理厂(LLTP)中,从传统硝化脱氮升级到部分硝化脱氮过程中,不同絮凝物大小的微生物群落演替和驱动机制。升级和絮凝物大小对微生物多样性和组成有显著影响。在具有均匀性和高传质效率的小型絮体中,升级后氨氧化细菌富集,而亚硝酸盐氧化细菌受到抑制。较大的絮体富集了 Defluviicoccus、Thauera 和 Truepera,而较小的絮体富集了亚硝酸单胞菌,这表明它们有可能成为生物标记。多网络分析揭示了微生物之间的相互作用。利用卷积神经网络的深度学习模型预测了脱氮效率。这些发现为优化 LLTP 过程和了解基于絮体大小的微生物群落动态提供了指导。
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Microbial community dynamics in different floc size aggregates during nitrogen removal process upgrading in a full-scale landfill leachate treatment plant

Upgrading processes to reduce biodegradable organic substance addition is crucial for treating landfill leachate with high pollutant concentrations, aiding carbon emission reduction. Aggregate size in activated sludge processes impacts pollutant removal and sludge/water separation. This study investigated microbial community succession and driving mechanisms in different floc-size aggregates during nitrogen removal progress upgrade from conventional to partial nitrification–denitrification in a full-scale landfill leachate treatment plant (LLTP) using 16S rRNA gene sequencing. The upgrade and floc sizes significantly influenced microbial diversity and composition. After upgrading, ammonia-oxidizing bacteria were enriched while nitrite-oxidizing bacteria suppressed in small flocs with homogeneity and high mass transfer efficiency. Larger flocs enriched Defluviicoccus, Thauera, and Truepera, while smaller flocs enriched Nitrosomonas, suggesting their potential as biomarkers. Multi-network analyses revealed microbial interactions. A deep learning model with convolutional neural networks predicted nitrogen removal efficiency. These findings guide optimizing LLTP processes and understanding microbial community dynamics based on floc size.

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来源期刊
Bioresource Technology
Bioresource Technology 工程技术-能源与燃料
CiteScore
20.80
自引率
19.30%
发文量
2013
审稿时长
12 days
期刊介绍: Bioresource Technology publishes original articles, review articles, case studies, and short communications covering the fundamentals, applications, and management of bioresource technology. The journal seeks to advance and disseminate knowledge across various areas related to biomass, biological waste treatment, bioenergy, biotransformations, bioresource systems analysis, and associated conversion or production technologies. Topics include: • Biofuels: liquid and gaseous biofuels production, modeling and economics • Bioprocesses and bioproducts: biocatalysis and fermentations • Biomass and feedstocks utilization: bioconversion of agro-industrial residues • Environmental protection: biological waste treatment • Thermochemical conversion of biomass: combustion, pyrolysis, gasification, catalysis.
期刊最新文献
Achieving advanced nitrogen removal with anammox and endogenous partial denitrification driven by efficient hydrolytic fermentation of slowly-biodegradable organic matter. Cadmium removal by constructed wetlands containing different substrates: performance, microorganisms and mechanisms. From agricultural biomass to D form lactic acid in ton scale via strain engineering of Lactiplantibacillus pentosus. Greenhouse gas emissions from rotating biological contactors combined with hybrid constructed wetlands treating polluted river. Mechanism of carbonized humic acid and magnesium aluminum-layered double hydroxide promoting biohydrogen generation.
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