scholarly journals Translating the agricultural N surplus hazard into groundwater pollution risk: Implications for effectiveness of mitigation measures in nitrate vulnerable zones

2021 ◽  
Vol 306 ◽  
pp. 107204
Author(s):  
Maria do Rosário Cameira ◽  
João Rolim ◽  
Fernanda Valente ◽  
Marta Mesquita ◽  
Ulrike Dragosits ◽  
...  
2016 ◽  
Vol 75 (16) ◽  
Author(s):  
Nebojša Atanacković ◽  
Veselin Dragišić ◽  
Vladimir Živanović ◽  
Sunčica Gardijan ◽  
Sava Magazinović

2013 ◽  
Vol 04 (11) ◽  
pp. 1213-1223 ◽  
Author(s):  
Innocent Kouassi Kouame ◽  
Aristide Gountôh Douagui ◽  
Kouadio Koffi ◽  
Brou Dibi ◽  
Lazare Kouakou Kouassi ◽  
...  

Author(s):  
José María Orellana Macías ◽  
María Jesús Perles Roselló

Anthropogenic activities are the main sources of groundwater pollution. In order to prevent groundwater degradation and to apply suitable mitigation measures, hazard maps are a useful instrument for decision makers. The ultimate goal of the research is to analyse the effectiveness of several groundwater hazard indexes at the Gallocanta Lagoon Basin. To do so, the Hazard Index, the Danger of Contamination Index and the Pollutant Origin and its Surcharge Hydraulically method were applied and compare, and the potentialities and weaknesses of the resulting maps have been analysed. Accurate hazard maps were obtained and, based on their methodological approach, significant differences were found in relation to the rating process, the inventory of the sources, and the treatment of quantity and likelihood. In the light of the results, the indexes tended to undervalue the hazard level of agricultural activities, which were the main sources of pollution of the study area. Therefore, due to the characteristic land uses of the study area, typical of the Mediterranean context, some proposals to improve the indexes have been suggested.


2018 ◽  
Vol 628-629 ◽  
pp. 1518-1530 ◽  
Author(s):  
Huan Huan ◽  
Bo-Tao Zhang ◽  
Huimin Kong ◽  
Mingxiao Li ◽  
Wei Wang ◽  
...  

2020 ◽  
Author(s):  
Camilla Negri ◽  
Miriam Glendell ◽  
Nick Schurch ◽  
Andrew J. Wade ◽  
Per-Erik Mellander

<p>Diffuse pollution of phosphorus (P) from agriculture is a major pressure on water quality in Ireland. The Agricultural Catchments Programme (ACP) was initiated to evaluate the Good Agricultural Practice measures implemented under the EU Nitrates Directive. Within the ACP, extensive monitoring and research has been made to understand the drivers and controls on nutrient loss in the agricultural landscape. However, tapering P pollution in agricultural catchments also requires informed decisions about the likely effectiveness of measures as well as their spatial targeting.  There is a need to develop Decision Support Tools (DST) that can account for the uncertainty inherently present in both data and water quality models.</p><p>Bayesian Belief Networks (BBNs) are probabilistic graphical models that allow the integration of both quantitative and qualitative information from different sources (experimental data, model outputs and expert opinion) all in one model. Moreover, these models can be easily updated with new knowledge and can be applied with scarce datasets. BBNs have previously been used in multiple decision-making settings to understand causal relationships in different contexts. Recently, BBNs were used to support ecological risk-based decision making.</p><p>In this study, a prototype BBN was implemented with the Genie software to develop a DST for understanding the influence of land management and P pollution risk in four ACP catchments dominated by intensively farmed land with contrasting hydrology and land use. In the fist stage of the study, the spatial BBN was constructed visualising the ‘source-mobilisation-transport-continuum’, identifying the main drivers of P pollution based on previous findings from the ACP catchments. A second step involved the consultation of experts and stakeholders through a series of workshops aimed at eliciting their input. These stakeholders have expertise ranging from hydrology and hydrochemistry, land management and farm consulting, to policy and environmental modelling.</p><p>At present, the BBN is being parameterized for a 12km<sup>2</sup> catchment with mostly grassland on poorly drained soils, using a high temporal and spatial resolution dataset that includes hydro-chemo-metrics, mapped soil properties (drainage class and Soil Morgan P), landscape characteristics (i.e. land use and management, presence of mitigation measures and presence of point pollution sources). Preliminary results show that the model captures the difference in P loss risk between catchments, probably caused by contrasting hydrological characteristics and soil P sources.</p><p>Future research will be focussed on parameterizing and testing the BBN in three other ACP catchments. Such parametrization will be pivotal to testing the model in data sparse catchments and possibly upscaling the tool to regional and national scale. Moreover, climate change and land use change modelled scenarios will be crucial to inform targeting of mitigation measures.  </p>


Sign in / Sign up

Export Citation Format

Share Document