Computational framework to analyze agrometeorological, climate and remote sensing data: challenges and perspectives.
AUTOR(ES)
ROMANI, L. A. S.
FONTE
CONGRESSO DA SOCIEDADE BRASILEIRA DE COMPUTAÇÃO
DATA DE PUBLICAÇÃO
2011
RESUMO
In the past few years, improvements in the data acquisition technology have decreased the time interval of data gathering. Consequently, institutions have stored huge amounts of data such as climate time series and remote sensing images. Computational models to filter, transform, merge and analyze data from many different areas are complex and challenging. The complexity increases even more when combining several knowledge domains. Examples are research in climatic changes, biofuel production and environmental problems. A possible solution to the problem is the association of several computational techniques. Accordingly, this paper presents a framework to analyze, monitor and visualize climate and remote sensing data by employing methods based on fractal theory, data mining and visualization techniques. Initial experiments showed that the information and knowledge discovered from this framework can be employed to monitor sugar cane crops, helping agricultural entrepreneurs to make decisions in order to become more productive. Sugar cane is the main source to ethanol production in Brazil, and has a strategic importance for the country economy and to guarantee the Brazilian self-sufficiency in this important, renewable source of energy.
ASSUNTO(S)
dados agrometeorológicos dados de sensoriamento remoto dados climáticos teoria dos fractais mineração de dados técnicas de visualização dados massivos séries temporais agricultura cana-de-açúcar remote sensing sugar cane data mining agriculture
ACESSO AO ARTIGO
http://www.alice.cnptia.embrapa.br/handle/doc/256494Documentos Relacionados
- A FRAMEWORK TO ANALYZE AFFORDANCES WHEN USING BIG DATA AND ANALYTICS IN ORGANIZATIONS: A PROPOSAL
- Cystoduodenostomy. New perspectives.
- Integrating time series mining and fractals to discover patterns and extreme events in climate and remote sensing databases.
- Designing data policy and governance for smart cities: theoretical essay using the IAD framework to analyze data-driven policy
- Health and disease: two philosophical perspectives.