Identifiant projet
115
Acronyme projet
ACEMD
Titre projet
Addressing Challenges in Clustering and Classification of Environmental Monitoring Data
Année début projet
2026
Année fin projet
2030
Type projet
Équipe projet
CA
Avancement projet
Envergure projet
Résumé projet
The aim of the project is twofold: (1) to conduct fundamental and applied research on the fields of classification and clustering, with emphasis on the analysis of environmental data; and (2) to stimulate cooperation by bringing French and Brazilian researchers/students together to exchange ideas and experiences. As there is a complementarity (clustering, meta-heuristics, meta-learning, AutoML, complexity and instance hardness measures) between the teams involved, the research proposed will be conducted from the perspective of various joint disciplines to attain more wide-ranging results. More specifically, we will address the following problems: (1) defining frameworks able to recommend time-series forecasting algorithms more suitable to the characteristics of the data; (2) defining frameworks able to recommend better pre-trained models to new data, in a transfer-learning approach; and (3) extending a novel clustering algorithm to multi-modal data while also seeking explainable results. These tasks meet the needs of our application domain, consisting of data from environmental monitoring units in the Iguaçu River basin.