Journal of Water Resource and Protection

Volume 4, Issue 11 (November 2012)

ISSN Print: 1945-3094   ISSN Online: 1945-3108

Google-based Impact Factor: 1.01  Citations  h5-index & Ranking

Bayesian Data Fusion (BDF) of Monitoring Data with a Statistical Groundwater Contamination Model to Map Groundwater Quality at the Regional Scale

HTML  Download Download as PDF (Size: 4545KB)  PP. 929-943  
DOI: 10.4236/jwarp.2012.411109    4,562 Downloads   7,371 Views  Citations

ABSTRACT

Groundwater contamination by nitrate within an unconfined sandy aquifer was mapped using a Bayesian Data Fusion (BDF) framework. Groundwater monitoring data was therefore combined with a statistical groundwater contamination model. In a first step, nitrate concentrations, measured at 99 monitoring stations irregularly distributed within the study area, were spatialized using ordinary kriging. Secondly, a statistical regression tree model of nitrate contamination in groundwater was constructed using land use, depth to the water table, altitude and slope as predictor variables. This allowed the construction of a regression tree based contamination map. In a third step, BDF was used to combine optimally the kriged nitrate contamination map with the regression tree based model into one single map, thereby weighing the kriged and regression tree based contamination maps in terms of their estimation uncertainty. It is shown that BDF allows integrating different sources of information about contamination in a final map, allowing quantifying the expected value and variance of the nitrate contamination estimation. It is also shown that the uncertainty in the final map is smaller than the uncertainty from the kriged or regression tree based contamination map.

Share and Cite:

Mattern, S. , Raouafi, W. , Bogaert, P. , Fasbender, D. and Vanclooster, M. (2012) Bayesian Data Fusion (BDF) of Monitoring Data with a Statistical Groundwater Contamination Model to Map Groundwater Quality at the Regional Scale. Journal of Water Resource and Protection, 4, 929-943. doi: 10.4236/jwarp.2012.411109.

Cited by

[1] Challenges of groundwater pollution and management in transboundary basins at the African scale
Proceedings of the International …, 2021
[2] Modelling Nitrate Pollution Vulnerability in the Brussel's Capital Region (Belgium) Using Data-Driven Modelling Approaches
2020
[3] Challenges in groundwater pollution management in transboundary basins: Groundwater pollution mapping at the African scale
2020
[4] Groundwater vulnerability assessment and mapping using DRASTIC model
2019
[5] Spatial filtering and Bayesian data fusion for mapping soil properties: A case study combining legacy and remotely sensed data in Iran
2019
[6] Source identification of nitrate contamination in the urban aquifer of Mashhad, Iran
2019
[7] Improving the reliability of groundwater monitoring networks using combined numerical, geostatistical and neural network-based simulation models
2019
[8] Bayesian data fusion for combining maps of predicted soil classes: A case study using legacy soil profiles and DEM covariates in Iran
2019
[9] Low Cost Sensor Networks; How Do We Know the Data are Reliable?
2019
[10] Application of random forest regression and comparison of its performance to multiple linear regression in modeling groundwater nitrate concentration at the African …
2018
[11] Multisensor data fusion and machine learning for environmental remote sensing
2018
[12] Mapping groundwater vulnerability at the pan-African scale
2017
[13] A meta-analysis and statistical modelling of nitrates in groundwater at the African scale
2016
[14] Index-based groundwater vulnerability mapping models using hydrogeological settings: A critical evaluation
Environmental Impact Assessment Review, 2015
[15] Modelling nitrate pollution pressure using a multivariate statistical approach: the case of Kinshasa groundwater body, Democratic Republic of Congo
Hydrogeology Journal, 2015

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.