Keyword search (4,164 papers available)

"river" Keyword-tagged Publications:

Title Authors PubMed ID
1 Organic chemicals of Arctic concern in Russian coastal seas Min XZ; Zhang X; Xie ZY; Nikolaev A; Vorkamp K; Ma JM; Reiersen LO; Li L; Cai MH; Ren NQ; Li YF; Zhang ZF; Kallenborn R; Muir D; 41571477
CHEMBIOCHEM
2 A DiffeRential Evolution Adaptive Metropolis (DREAM)-based inverse model for continuous release source identification in river pollution incidents: Quantitative evaluation and sensitivity analysis Zhu Y; Cao H; Gao Z; Chen Z; 38309421
ENCS
3 Facilitation strength across environmental and beneficiary trait gradients in stream communities Tumolo BB; Albertson LK; Daniels MD; Cross WF; Sklar LL; 37555442
CONCORDIA
4 Development of a DREAM-based inverse model for multi-point source identification in river pollution incidents: Model testing and uncertainty analysis Zhu Y; Chen Z; 36191500
ENCS
5 Survey of Cooperative Advanced Driver Assistance Systems: From a Holistic and Systemic Vision González-Saavedra JF; Figueroa M; Céspedes S; Montejo-Sánchez S; 35459025
ENCS
6 A regional numerical environmental multimedia modeling approach to assess spatial Eco-Environmental exposure risk of perfluorooctane sulfonate (PFOS) in the Pearl river basin Chen Z; Dong J; Asif Z; 35121494
ENCS
7 Identification of point source emission in river pollution incidents based on Bayesian inference and genetic algorithm: Inverse modeling, sensitivity, and uncertainty analysis Zhu Y; Chen Z; Asif Z; 34380214
ENCS
8 A comprehensive investigation of industrial plastic pellets on beaches across the Laurentian Great Lakes and the factors governing their distribution. Corcoran PL, de Haan Ward J, Arturo IA, Belontz SL, Moore T, Hill-Svehla CM, Robertson K, Wood K, Jazvac K 32781316
CONCORDIA

 

Title:Development of a DREAM-based inverse model for multi-point source identification in river pollution incidents: Model testing and uncertainty analysis
Authors:Zhu YChen Z
Link:https://pubmed.ncbi.nlm.nih.gov/36191500/
DOI:10.1016/j.jenvman.2022.116375
Publication:Journal of environmental management
Keywords:Comprehensive sensitivity analysisDiffeRential evolution adaptive metropolis (DREAM) algorithmMulti-point source identificationRiver pollution incidentsUncertainty quantification
PMID:36191500 Category: Date Added:2022-10-04
Dept Affiliation: ENCS
1 Department of Building, Civil and Environmental Engineering, Concordia University, Montreal, Quebec, H3G 1M8, Canada. Electronic address: cqurgzyy0531@foxmail.com.
2 Department of Building, Civil and Environmental Engineering, Concordia University, Montreal, Quebec, H3G 1M8, Canada. Electronic address: zhichen@bcee.concordia.ca.

Description:

Source identification plays a vital role in implementing control measures for sudden river pollution incidents. In contrast to single-point source identification problems, there have been no investigations into inverse identification of multi-point emissions. In this study, an inverse model is developed based on the observed time series of pollutant concentrations and the DiffeRential Evolution Adaptive Metropolis (DREAM) method to identify multi-point sources with uncertainty quantification. We aim to simultaneously determine source mass, release location and time of multi-point sources. The newly developed DREAM-based model has been tested and verified through both numerical and field data case studies in terms of accuracy, reliability, and computational time. Adapted cases with single-point, two-point and three-point sources in the Songhua River are conducted to test the applicability of the modeling approach, respectively. The developed model can correctly quantify source parameters with a relative error that does not exceed ±0.63%, although it shows that an increase of emission sources may slightly increase the identification error. Among the three source parameters, the identification error of the release time tends to rise more obviously in response to the increase in the number of pollution sources. It is also found that the identification accuracy is primarily sensitive to the river velocity, followed by the dispersion coefficient and the river cross-sectional area. Furthermore, good monitoring strategies, including reducing observation errors, shortening monitoring interval time and selecting the proper monitoring distance between the monitoring and the source sites, help to achieve a better application of the developed model in river pollution incidents.





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