Mining relevant and extreme patterns on climate time series with CLIPSMiner



Voir les résultats en:
https://www.alice.cnptia.embrapa.br/handle/doc/863850
Licence de la ressource: 
Creative Commons Attribution-Pas d'utilisation commerciale-Pas de modifications (CC BY-NC-ND)
Type: 
Article de journal
Journal: 
Journal of Information and Data Management
Nombre: 
2
Pages: 
245-260
Volume: 
1
Année: 
2010
Auteur: 
Romani L. A. S.
Ávila A. M. H.
Zullo Júnior J.
Traina Júnior C.
Traina A. J. M.
Description: 

One of the most important challenges for the researchers in the 21st Century is related to global heating and climate change that can have as consequence the intensification of natural hazards. Another problem of changes in the Earth's climate is its impact in the agriculture production. In this scenario, application of statistical models as well as development of new methods become very important to aid in the analyses of climate from ground-based stations and outputs of forecasting models. Additionally, remote sensing images have been used to improve the monitoring of crop yields. In this context we propose a new technique to identify extreme values in climate time series and to correlate climate and remote sensing data in order to improve agricultural monitoring. Accordingly, this paper presents a new unsupervised algorithm, called CLIPSMiner (CLImate PatternS Miner) that works on multiple time series of continuous data, identifying relevant patterns or extreme ones according to a relevance factor, which can be tuned by the user. Results show that CLIPSMiner detects, as expected, patterns that are known in climatology, indicating the correctness and feasibility of the proposed algorithm. Moreover, patterns detected using the highest relevance factor is coincident with extreme phenomena. Furthermore, series correlations detected by the algorithm show a relation between agroclimatic and vegetation indices, which confirms the agrometeorologists' expectations.

Αnnée de publication: 
2010