Article ID Journal Published Year Pages File Type
803128 Reliability Engineering & System Safety 2013 8 Pages PDF
Abstract

In this paper we compare two approaches for uncertainty propagation in a model for Environmental Impact Assessment (EIA). A purely Probabilistic (PMC) and a Hybrid probabilistic–possibilistic Monte Carlo (HMC) method are considered in their application for the estimation of the ground level concentration of dioxin/furans emitted from a waste gasification plant. Under the condition of insufficient information for calibrating the estimation model parameters, HMC is shown to be a valid way for properly propagating parameters uncertainty to the model output, without adopting arbitrary and subjective assumptions on the input probability distribution functions. In this sense, HMC could improve the transparency of the EIA procedures with positive effects on the communicability and credibility of its findings.

Related Topics
Physical Sciences and Engineering Engineering Mechanical Engineering
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