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Geostatistics for space-time analysis of hydrological events



Convener: Gerald A Corzo P  <javascript:void(0)> 
Co-Conveners: Mikhail Kanevski  <javascript:void(0)> , Geraldine Wong
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Abstract Submission
<http://meetingorganizer.copernicus.org/EGU2011/abstractsubmission/6996> 

Convener Login
<http://meetingorganizer.copernicus.org/EGU2011/sessionmodification/6996> 


Many environmental and hydrological problems are spatial or temporal, or
both in nature. For a more realistic representation of these hydrological
events, the spatio-temporal analysis is important and the significance of
spatial and spatio-temporal analysis is increasingly recognized over the
years. Spatio-temporal analysis allow for identifying and explaining
large-scale anomalies which are useful for understanding hydrological
characteristics and subsequently predicting these hydrological events. This
remains an important challenge in hydrology today.

Geostatistics is the statistics of variables that are spatial in nature, and
is an emerging field aimed at tackling the spatio-temporal analysis. This
area is of increasing importance and is likely to become more so in the
future, especially with both short and long-term water management planning
and mitigation of extreme hydrological events (e.g. droughts and floods).

The aim of this session is to provide a platform and opportunity to
demonstrate and discuss innovative applications and methodologies of this
emerging area in a hydrological context. The session is targeted at both
hydrologists and statisticians interested in the framework of spatial and
temporal analysis of hydrological events and will allow researchers from a
variety of fields to effectively communicate their research.

The session topics aims to cover broad scope and is expected to cover the
following (and not only) aspects:

1. New and innovative geostatistical applications in spatial modeling,
spatio-temporal modeling, spatial reasoning and data mining.
2. Spatial dynamics of natural events (e.g. Morphological changes, spatial
displacements of phenomena, others).
3. Generalization and optimization of spatial models. Monitoring networks
optimization. 
4. Spatial switching and/or ensemble of models. 
5. Spatio-temporal methods for the analysis of hydrological, environmental
and climate anomalies. 
6. Spatial analysis and predictions using Gaussian and non-Gaussian models.
7. Spatial covariance application revealing links between hydrological
variables and extremes.
8. Copulas applications on the identification of spatio-temporal
relationships
9. Prediction on regions of unobserved or limited where gridded and point
simulated data from physical-based models is available. 
10. Generalized extreme value distributions used to model extremes for
spatial events analyses. 
11. Geostatistical characterization of uncertainties. 
 

The link to the session can be found at: 
http://meetingorganizer.copernicus.org/EGU2011/session/6996/kanevski  

 

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