Integrated model for estimating odor emissions from civil wastewater treatment plants

The objective of this research project was the design and development of an integrated model for odor emission estimation in wastewater treatment plants. The SMAT’s plant, the largest wastewater treatment facility in Italy, was used as a case study. This article reports the results of the characteri...

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Veröffentlicht in:Environmental science and pollution research international 2020-02, Vol.27 (4), p.3992-4007
Hauptverfasser: Ravina, Marco, Panepinto, Deborah, Mejia Estrada, Jheyson, De Giorgio, Luca, Salizzoni, Pietro, Zanetti, Mariachiara, Meucci, Lorenza
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Sprache:eng
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Zusammenfassung:The objective of this research project was the design and development of an integrated model for odor emission estimation in wastewater treatment plants. The SMAT’s plant, the largest wastewater treatment facility in Italy, was used as a case study. This article reports the results of the characterization phase that led to the definition and design of the proposed conceptual model for odor emission estimation. In this phase, concentrations of odor chemical tracers (VOC, H 2 S, NH 3 ) and odor concentrations were monitored repeatedly. VOC screening with GC-MS analysis was also performed. VOC concentrations showed significant variability in space and magnitude. NH 3 and H 2 S were also detected at considerable concentrations. Results were elaborated to define a spatially variable linear relationship between the sum of odor activity values (SOAV) and odor concentrations. Based on the results, a conceptual operational model was presented and discussed. The proposed system is composed by a network of continuous measurement stations, a set of algorithms for data elaboration and synchronization, and emission dispersion modeling with the application of Lagrangian atmospheric models.
ISSN:0944-1344
1614-7499
DOI:10.1007/s11356-019-06939-5