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9. | | CHINO, D. Y. T.; GONCALVES, R. R. V.; ROMANI, L. A. S.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. Discovering frequent patterns on agrometeorological data with TrieMotif. In: INTERNATIONAL CONFERENCE ON ENTERPRISE INFORMATION SYSTEMS, 16., 2014, Lisbon. Enterprise information systems: ICEIS 2014: revised selected papers. Switzerland: Springer, 2015. p. 91-107. (Lecture notes in business information processing, 227). Editores: José Cordeiro, Slimane Hammoudi, Leszek Maciaszek, Olivier Camp, Joaquim Filipe. Biblioteca(s): Embrapa Agricultura Digital. |
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11. | | CHINO, D. Y. T.; GONÇALVES, R. R. V.; ROMANI, L. A. S.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. TrieMotif: a new and efficient method to mine frequent K-motifs from large time series. In: INTERNATIONAL CONFERENCE ON ENTERPRISE INFORMATION SYSTEMS, 16.; INTERNATIONAL CONFERENCE ON EVALUATION OF NOVEL APPROACHES TO SOFTWARE ENGINEERING, 9., 2014, Lisbon. Proceedings... [S.l.]: Scitepress, 2014. p. 60-69. ICEIS 2014. Biblioteca(s): Embrapa Agricultura Digital. |
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12. | | COLTRI, P. P.; CORDEIRO, R. L. F.; SOUZA, T. T. de; ROMANI, L. A. S.; ZULLO JÚNIOR, J.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. Classificação de áreas de café em Minas Gerais por meio do novo algoritmo QMAS em imagem espectral Geoeye-1. In: SIMPÓSIO BRASILEIRO DE SENSORIAMENTO REMOTO, 15., 2011, Curitiba. Anais... São José dos Campos: INPE, 2011. p. 0539-0546. SBSR 2011. Biblioteca(s): Embrapa Agricultura Digital. |
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13. | | ROMANI, L. A. S.; CHINO, D. Y. T.; AVALHAIS, L. P. S.; OLIVEIRA, W. D.; GONÇALVES, R. R. V.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. Involving users in the gestural language definition process for the NInA framework. In: BRAZILIAN SYMPOSIUM ON HUMAN FACTORS IN COMPUTING SYSTEMS, 12., 2013, Manaus. Proceedings... Porto Alegre: SBC, 2013. p. 280-283. IHC 2013. Biblioteca(s): Embrapa Agricultura Digital. |
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14. | | ROMANI, L. A. S.; GONÇALVES, R. R. do V.; AMARAL, B. F. do; ZULLO JUNIOR, J.; TRAINA JUNIOR, C.; SOUSA, E. P. M. de; TRAINA, A. J. M. Acompanhamento de safras de cana-de-açúcar por meio de técnicas de agrupamento em séries temporais de NDVI. In: SIMPÓSIO BRASILEIRO DE SENSORIAMENTO REMOTO, 15., 2011, Curitiba. Anais... São José dos Campos: INPE, 2011. p. 1-8. SBSR 2011. Biblioteca(s): Embrapa Agricultura Digital. |
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15. | | NUNES, S. A.; ROMANI, L. A. S.; AVILA, A. M. H.; TRAINA JÚNIOR, C.; SOUSA, E. P. M. de; TRAINA, A. J. M. Análise baseada em fractais para identificação de mudanças de tendências em múltiplas séries climáticas. In: BRAZILIAN SYMPOSIUM ON DATABASES, 25., 2010, Belo Horizonte. Proceedings... Belo Horizonte: UFMG, 2010. p. 65-72. SBBD 2010. Biblioteca(s): Embrapa Agricultura Digital. |
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16. | | ROMANI, L. A. S.; SOUSA, E. P. M. de; RIBEIRO, M. X.; ÁVILA, A. M. H. de; ZULLO JÚNIOR, J.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. Mining climate and remote sensing time series to improve monitoring of sugar cane fields. In: PRADO, H. A. do; LUIZ, A. J. B.; CHAIB FILHO, H. Computational Methods for Agricultural Research: Advances and Applications. Hershey: Information Science Reference, 2011. chap. 4, p. 50-72. Biblioteca(s): Embrapa Agricultura Digital. |
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17. | | CHINO, D. Y. T.; ROMANI, L. A. S.; AVALHAIS, L. P. S.; OLIVEIRA, W. D.; GONÇALVES, R. R. V.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. The NInA Framework using gesture to improve interaction and collaboration in geographical information systems. In: INTERNATIONAL CONFERENCE ON ENTERPRISE INFORMATION SYSTEMS, 15.; INTERNATIONAL CONFERENCE ON EVALUATION OF NOVEL APPROACHES TO SOFTWARE ENGINEERING, 8., 2013, Angers Loire Valley. Proceedings... [S.l.]: Scitepress, 2013. p. 35-43. ICEIS 2013. ENASE 2013. Biblioteca(s): Embrapa Agricultura Digital. |
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18. | | ROMANI, L. A. S.; AVILA, A. M. H. de; CHINO, D. Y. T.; ZULLO JÚNIOR, J.; CHBEIR, R.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. A new time series mining approach applied to multitemporal remote sensing imagery. IEEE transactions on geoscience and remote sensing, New York, v. 51, n. 1, p. 140-150, Jan. 2013. Biblioteca(s): Embrapa Agricultura Digital. |
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19. | | ROMANI, L. A. S.; SOUSA, E. P. M. de; RIBEIRO, M. X.; ZULLO JÚNIOR. J.; TRAINA JÚNIOR, C.; TRAINA, A. J. M. Employing fractal dimension to analyze climate and remote sensing data streams. In: SIAM INTERNATIONAL CONFERENCE ON DATA MINING, 9., 2009, Sparks. Proceedings... Society for Industrial and Applied Mathematics, Philadelphia, 2009. Não paginado. SDM 2009. Biblioteca(s): Embrapa Agricultura Digital. |
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Registros recuperados : 26 | |
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Registro Completo
Biblioteca(s): |
Embrapa Agricultura Digital. |
Data corrente: |
19/12/2013 |
Data da última atualização: |
08/01/2020 |
Tipo da produção científica: |
Artigo em Anais de Congresso |
Autoria: |
NUNES, S. A.; ROMANI, L. A. S.; AVILA, A. M. H.; COLTRI, P. P.; TRAINA JÚNIOR, C.; CORDEIRO, R. L. F.; SOUSA, E. P. M.; TRAINA, A. J. M. |
Afiliação: |
SANTIAGO A. NUNES, ICMC/USP; LUCIANA ALVIM SANTOS ROMANI, CNPTIA; ANA M. H. AVILA, Cepagri/Unicamp; PRISCILA P. COLTRI, Cepagri/Unicamp; CAETANO TRAINA JÚNIOR, ICMC/USP; ROBSON L. F. CORDEIRO, ICMC/USP; ELAINE P. M. SOUSA, ICMC/USP; AGMA J. M. TRAINA, ICMC/USP. |
Título: |
Analysis of large scale climate data: how well climate change models and data from real sensor networks agree? |
Ano de publicação: |
2013 |
Fonte/Imprenta: |
In: INTERNATIONAL WORLD WIDE WEB CONFERENCE, 22., 2013, Rio de Janeiro. Proceedings... New York: ACM, 2013. |
Páginas: |
p. 517-526. |
ISBN: |
978-1-4503-2038-2 |
Idioma: |
Inglês |
Notas: |
WWW 2013. |
Conteúdo: |
Research on global warming and climate changes has attracted a huge attention of the scientific community and of the media in general, mainly due to the social and economic impacts they pose over the entire planet. Climate change simulation models have been developed and improved to provide reliable data, which are employed to forecast effects of increasing emissions of greenhouse gases on a future global climate. The data generated by each model simulation amount to Terabytes of data, and demand fast and scalable methods to process them. In this context, we propose a new process of analysis aimed at discriminating between the temporal behavior of the data generated by climate models and the real climate observations gathered from ground-based meteorological station networks. Our approach combines fractal data analysis and the monitoring of real and model-generated data streams to detect deviations on the intrinsic correlation among the time series defined by different climate variables. Our measurements were made using series from a regional climate model and the corresponding real data from a network of sensors from meteorological stations existing in the analyzed region. The results show that our approach can correctly discriminate the data either as real or as simulated, even when statistical tests fail. Those results suggest that there is still room for improvement of the state-of-the-art climate change models, and that the fractal-based concepts may contribute for their improvement, besides being a fast, parallelizable, and scalable approach. MenosResearch on global warming and climate changes has attracted a huge attention of the scientific community and of the media in general, mainly due to the social and economic impacts they pose over the entire planet. Climate change simulation models have been developed and improved to provide reliable data, which are employed to forecast effects of increasing emissions of greenhouse gases on a future global climate. The data generated by each model simulation amount to Terabytes of data, and demand fast and scalable methods to process them. In this context, we propose a new process of analysis aimed at discriminating between the temporal behavior of the data generated by climate models and the real climate observations gathered from ground-based meteorological station networks. Our approach combines fractal data analysis and the monitoring of real and model-generated data streams to detect deviations on the intrinsic correlation among the time series defined by different climate variables. Our measurements were made using series from a regional climate model and the corresponding real data from a network of sensors from meteorological stations existing in the analyzed region. The results show that our approach can correctly discriminate the data either as real or as simulated, even when statistical tests fail. Those results suggest that there is still room for improvement of the state-of-the-art climate change models, and that the fractal-based concepts may contribute for thei... Mostrar Tudo |
Palavras-Chave: |
Análise fractal; Climate data; Dados climáticos; Data streams; Fractal analysis; Modelos de mudanças climáticas; Sensor networks. |
Thesaurus NAL: |
Climate change; Models. |
Categoria do assunto: |
X Pesquisa, Tecnologia e Engenharia |
Marc: |
LEADER 02626nam a2200337 a 4500 001 1974438 005 2020-01-08 008 2013 bl uuuu u00u1 u #d 020 $a978-1-4503-2038-2 100 1 $aNUNES, S. A. 245 $aAnalysis of large scale climate data$bhow well climate change models and data from real sensor networks agree?$h[electronic resource] 260 $aIn: INTERNATIONAL WORLD WIDE WEB CONFERENCE, 22., 2013, Rio de Janeiro. Proceedings... New York: ACM$c2013 300 $ap. 517-526. 500 $aWWW 2013. 520 $aResearch on global warming and climate changes has attracted a huge attention of the scientific community and of the media in general, mainly due to the social and economic impacts they pose over the entire planet. Climate change simulation models have been developed and improved to provide reliable data, which are employed to forecast effects of increasing emissions of greenhouse gases on a future global climate. The data generated by each model simulation amount to Terabytes of data, and demand fast and scalable methods to process them. In this context, we propose a new process of analysis aimed at discriminating between the temporal behavior of the data generated by climate models and the real climate observations gathered from ground-based meteorological station networks. Our approach combines fractal data analysis and the monitoring of real and model-generated data streams to detect deviations on the intrinsic correlation among the time series defined by different climate variables. Our measurements were made using series from a regional climate model and the corresponding real data from a network of sensors from meteorological stations existing in the analyzed region. The results show that our approach can correctly discriminate the data either as real or as simulated, even when statistical tests fail. Those results suggest that there is still room for improvement of the state-of-the-art climate change models, and that the fractal-based concepts may contribute for their improvement, besides being a fast, parallelizable, and scalable approach. 650 $aClimate change 650 $aModels 653 $aAnálise fractal 653 $aClimate data 653 $aDados climáticos 653 $aData streams 653 $aFractal analysis 653 $aModelos de mudanças climáticas 653 $aSensor networks 700 1 $aROMANI, L. A. S. 700 1 $aAVILA, A. M. H. 700 1 $aCOLTRI, P. P. 700 1 $aTRAINA JÚNIOR, C. 700 1 $aCORDEIRO, R. L. F. 700 1 $aSOUSA, E. P. M. 700 1 $aTRAINA, A. J. M.
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