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Statistical analysis of spatial and temporal data [ LBIRE2101 ]


3.0 crédits ECTS  22.5 h + 15.0 h   2q 

Teacher(s) Bogaert Patrick ;
Language French
Place
of the course
Louvain-la-Neuve
Main themes

Notions of spatial/temporal dependency and its effect on statistical estimation. Quantification and modelling of dependencies through space and time. Random fields theory. Prediction and simulation of correlated data. Mapping and forecasting methods.

Aims

A the end of this activity, the student is able to :

·       Name, describe and explain the theoretical concepts underlying the stochastic approach for the analysis and the modeling of spatial and temporal data in an environmental framework;

  • Explain the mathematical concepts and use the mathematical tools that are relevant for statistical exploratory analyses and inferential estimations from environmental data;
  • Use these concepts and tools in an operational framework in order to make statistical analyses and modeling from a real environmental data set in the framework of a group project;
  • Explain and justify the methodological choices that are made for the analyses and the modeling steps by integrating the relevant underlying theoretical concepts that have been presented and used during the practical exercises;
  • Write a concise report based on the main findings for this analysis and modeling work by using a relevant and accurate mathematical language and appropriate figures.
Content

This course will complete the basic notions already presented during the courses LBIR 1203 - Probability and Statistics (I) and LBIR 1304 - Probability and Statistics (II). The student will be able to analyze data that are correlated through space and time, that are frequently encountered in the agro-environmental framework. The course will emphasize the link between the general theory and the practical specificities of environmental data. It should allow the student to model such kind of processes and to use them in a mapping or forecasting context. Practical exercises using the Matlab software will take place in a computer room.

Other information This course follows the BIR 1203 and BIR 1304 courses. There will be a written examination. Support is a set of slides and additional notes.
Cycle et année
d'étude
> Master [120] in Statistics: Biostatistics
> Master [120] in Forests and Natural Areas Engineering
> Master [120] in Environmental Bioengineering
> Master [120] in Biology of Organisms and Ecology
> Master [120] in Civil Engineering
> Certificat universitaire en statistique
> Advanced Master in Water Resources
Faculty or entity
in charge
> AGRO


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