In many environmental studies spatial variability is viewed as the only source of uncertainty while measurement errors tend to be ignored. This article presents an indicator kriging-based approach to account for measurement errors in the modeling of uncertainty prevailing at unsampled locations. Probability field simulation is then used to assess the probability that the average pollutant concentration within remediation units exceeds a regulatory threshold, and probability maps are used to identify hazardous units that need to be remediated. This approach is applied to two types of dioxin data (composite and single spoon samples) with different measurement errors which were collected at the Piazza Road dioxin site, an EPA Superfund site lo...
A new method has been developed to model the uncertainty of measured concentrations in test material...
In the assessment of potentially contaminated land,the number of samples and the uncertainty of the ...
Decision-making in environmental issues often includes uncertainty in the input data and the resulti...
This article presents an indicator kriging-based approach to account for measurement errors in the m...
Accounting for measurement error in uncertainty modeling and decision-making using indicator kriging...
Environmental attributes are usually highly variable both in space and time leading to substantial u...
Environmental attributes are usually highly variable both in space and time leading to substantial u...
The assessment of contaminated land often requires the collection and analysis of soil samples and t...
In order for soil resources to be sustainably managed, it is necessary to have reliable, valid data ...
Data collected during the sampling of polluted sites are mainly used- through an exploratory and var...
Measurements taken to characterise environmental contamination contain uncertainty, which is generat...
Methods have been devised for estimating measurement uncertainties due to field sampling. These meth...
1. Uncertainty in measurements of contaminant concentration from site investigation is inevitable, a...
It is argued that the objective of sampling should be modified from the pursuit of representative sa...
Uncertainty quantification is an important topic for many environmental studies, such as identifying...
A new method has been developed to model the uncertainty of measured concentrations in test material...
In the assessment of potentially contaminated land,the number of samples and the uncertainty of the ...
Decision-making in environmental issues often includes uncertainty in the input data and the resulti...
This article presents an indicator kriging-based approach to account for measurement errors in the m...
Accounting for measurement error in uncertainty modeling and decision-making using indicator kriging...
Environmental attributes are usually highly variable both in space and time leading to substantial u...
Environmental attributes are usually highly variable both in space and time leading to substantial u...
The assessment of contaminated land often requires the collection and analysis of soil samples and t...
In order for soil resources to be sustainably managed, it is necessary to have reliable, valid data ...
Data collected during the sampling of polluted sites are mainly used- through an exploratory and var...
Measurements taken to characterise environmental contamination contain uncertainty, which is generat...
Methods have been devised for estimating measurement uncertainties due to field sampling. These meth...
1. Uncertainty in measurements of contaminant concentration from site investigation is inevitable, a...
It is argued that the objective of sampling should be modified from the pursuit of representative sa...
Uncertainty quantification is an important topic for many environmental studies, such as identifying...
A new method has been developed to model the uncertainty of measured concentrations in test material...
In the assessment of potentially contaminated land,the number of samples and the uncertainty of the ...
Decision-making in environmental issues often includes uncertainty in the input data and the resulti...