Publication Date:
2022
abstract:
To fully understand a Natural System, the representation of an environmental variable's distribution in 3D space is a mandatory
and complex task. The challenge derives from a scarcity of samples number in the survey domain (e.g., logs in a reservoir, soil
samples, fixed acquisition sampling stations) or an implicit difficulty in the in-situ measurement of parameters. Field or lab
measurements are generally considered error-free, although not so. That aspect, combined with conceptual and numerical
approximations used to model phenomena, makes the results intrinsically less performing, fading the interpretation.
In this context, we design a computational infrastructure to evaluate spatial uncertainty in a multi-scenario application in En-
vironment survey and protection, such as in environmental geochemistry, coastal oceanography, or infrastructure engineering.
Our Research aims to expand the operative knowledge by developing an open-source stochastic tool, named MUSE, the acronym
for Modeling Uncertainty as a Support for Environment. At this stage, the methodology mainly includes the definition of a
flexible environmental data format, a geometry processing module to discretize the space, and geostatistics tools to evaluate
the spatial continuity of sampled parameters, predicting random variable distribution. The implementation of the uncertainty
module and the development of a graphic interface for ad-hoc visualization will be integrated as the next step. The poster
summarizes research purposes, and MUSE computational code structure developed so far.
Iris type:
04.03 Poster in Atti di convegno
Keywords:
3D modeling; geostatistical analysis
List of contributors: