O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil

Detalhes bibliográficos
Ano de defesa: 2007
Autor(a) principal: Santana, Charles Novaes de lattes
Orientador(a): Miranda, Jos? Garcia Vivas lattes
Banca de defesa: Não Informado pela instituição
Tipo de documento: Dissertação
Tipo de acesso: Acesso aberto
Idioma: por
Instituição de defesa: UNIVERSIDADE ESTADUAL DE FEIRA DE SANTANA
Programa de Pós-Graduação: Mestrado em Modelagem em Ci?ncias da Terra e do Ambiente
Departamento: Ci?ncia Ambiental
País: BR
Palavras-chave em Português:
Palavras-chave em Inglês:
Área do conhecimento CNPq:
Link de acesso: http://localhost:8080/tede/handle/tede/53
Resumo: Brazil Northeast s climate is usually described as semi-arid, characterized by hard dry seasons intermingled by hard rainfall seasons. Some areas of Northeast present annual pluviometric measure about 400 mm in mean, while in others the annual pluviometric measure is about 2000 mm. Rain events result from interplay of several physical phenomena, most of which can be individually described on the basic laws of mechanics and thermodynamics in a rather adequate way. Because of this, a huge progress has been achieved in recent years in relation to weather forecast with the use of very precise algorithms in large scale computing resources. They take into account the variables that are relevant for the atmospheric and ocean circulation and input of large amount of physical data obtained from a dense set of stations scattered around the world. In order to improve the interpretation of the accurate data resulting from the description of atmospheric phenomena and rain events, it is necessary to proceed with sophisticated analyses of recorded and simulated data, as spatial and temporal statistical correlations, scale properties, topological properties of spatial event distribution, ad so on. They indicate the extent of statistical relevance of the data, local and global effects, typical patterns, and other topological features related to the phenomena.In this work, we explore the usefulness of complex network framework for the analysis and nderstanding of rain events, based solely on recorded data from a set of stations in Northeast Brazil. The method is inspired on a proposal to characterize actual sequences of earthquake events where, like precipitation phenomena, the available data stems from complex systems with a very large number of physical variables. The potential network nodes are the meteorological stations where the rain events have been recorded, while the network edges are placed according to rules that take into account temporal and spatial correlation criteria between events occurring at different stations, for a time span as large as one month. We evaluate usual network properties based on diameter, node degrees, clustering coefficient, minimal inter-node distance along network edges. This allows for a characterization of networks based on seasonality and on spatial span of the region where the stations are distributed. The obtained results are discussed, taking into account the known precipitation patterns of the investigated region. rainfall variability, complex networks, fractals.
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spelling Miranda, Jos? Garcia Vivashttp://lattes.cnpq.br/1608472474770322CPF:0024600530http://lattes.cnpq.br/0342795948350883Santana, Charles Novaes de2015-07-15T13:31:42Z2008-07-292007-11-22SANTANA, Charles Novaes de. O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil. 2007. 84 f. Disserta??o (Mestrado em Ci?ncia Ambiental) - UNIVERSIDADE ESTADUAL DE FEIRA DE SANTANA, Feira de Santana, 2007.http://localhost:8080/tede/handle/tede/53Brazil Northeast s climate is usually described as semi-arid, characterized by hard dry seasons intermingled by hard rainfall seasons. Some areas of Northeast present annual pluviometric measure about 400 mm in mean, while in others the annual pluviometric measure is about 2000 mm. Rain events result from interplay of several physical phenomena, most of which can be individually described on the basic laws of mechanics and thermodynamics in a rather adequate way. Because of this, a huge progress has been achieved in recent years in relation to weather forecast with the use of very precise algorithms in large scale computing resources. They take into account the variables that are relevant for the atmospheric and ocean circulation and input of large amount of physical data obtained from a dense set of stations scattered around the world. In order to improve the interpretation of the accurate data resulting from the description of atmospheric phenomena and rain events, it is necessary to proceed with sophisticated analyses of recorded and simulated data, as spatial and temporal statistical correlations, scale properties, topological properties of spatial event distribution, ad so on. They indicate the extent of statistical relevance of the data, local and global effects, typical patterns, and other topological features related to the phenomena.In this work, we explore the usefulness of complex network framework for the analysis and nderstanding of rain events, based solely on recorded data from a set of stations in Northeast Brazil. The method is inspired on a proposal to characterize actual sequences of earthquake events where, like precipitation phenomena, the available data stems from complex systems with a very large number of physical variables. The potential network nodes are the meteorological stations where the rain events have been recorded, while the network edges are placed according to rules that take into account temporal and spatial correlation criteria between events occurring at different stations, for a time span as large as one month. We evaluate usual network properties based on diameter, node degrees, clustering coefficient, minimal inter-node distance along network edges. This allows for a characterization of networks based on seasonality and on spatial span of the region where the stations are distributed. The obtained results are discussed, taking into account the known precipitation patterns of the investigated region. rainfall variability, complex networks, fractals.Climaticamente, a regi ao Nordeste do Brasil ?e marcada pela predomin?ncia de clima semi-?arido, caracterizado por per?ıodos de secas severas intercalados por per?odos de chuvas intensas. Eventos clim?aticos como a chuva resultam da intera??o de v?rios fen?menos f?sicos que, em sua maioria, pode ser descrita individualmente pelas leis b?sicas da mec?nica e termodin?mica de forma satisfat?ria. Por esse motivo, um imenso progresso tem sido observado, nos ?ltimos anos, com rela??o ? previs?o de tempo e clima utilizando algoritmos mais precisos em recursos computacionais de larga escala. Estes algoritmos levam em considera??o as vari?veis que s?o relevantes para a circula??o atmosf?rica e oce?nica al?m de uma grande quantidade de dados f?sicos obtidos de um conjunto denso de esta??es distribu?das ao redor do mundo. Com objetivo de prover a interpreta??o dos dados destes algoritmos, ? necess?rio proceder com an?lises sofisticadas dos dados armazenados e simulados, como correla?c oes estat?ısticas temporais e espaciais, propriedades de escalas, propriedades topologicas da distribui??o espacial de eventos, etc. Os resultados falam sobre a relev?ncia estat?stica dos dados, efeitos locais e globais, padr?es t?picos e outros recursos relacionados ao fen?meno. Neste trabalho, n?s exploramos o uso da Teoria de Redes Complexas para a an?lise e interpreta??o de eventos de chuva, baseandonos somente em registros de dados de um conjunto de esta??es pluviom?tricas da regi?o Nordeste do Brasil. Este m?etodo ? inspirado em uma proposta para caracterizar sequ?ncias de eventos s?smicos, eventos em que, assim como no fen?meno das chuvas, a grande quantidade de vari?aveis f?sicas envolvidas motiva a an?lise usando m?todos da Teoria de Sistemas Complexos. Os n?s das redes geradas s?o as esta??es meteorol?gicas onde h? dados de chuva no per?odo analisado, enquanto as arestas s?o criadas de acordo com crit?rios de correla??o temporal e espacial entre eventos de chuva ocorridos em diferentes esta??es pluviom?tricas. Calculamos os ?ndices mais comuns de caracteriza??o de redes complexas, tais como: di?metro, caminho m?nimo m?dio, coeficiente de aglomera??o m?dio. As redes conectam esta??es a diferentes dist?ncias, e a fim de estudar a causalidade n?o-local desse fen?meno foram calculados ?ndices fractais de caracteriza??o. Os valores de di?metro e de caminho m?nimo m?dio s?o menores para os meses de inverno e primavera, t?picos de chuva mais localizada no litoral; enquanto que para os meses de ver?o e outono, t?picos de chuva mais distribu?ıda em toda a regi?o, os valores s?o maiores. A dimens?o fractal calculada para dados do Sul do Nordeste (Bahia) ? semelhante ? calculada para dados do Norte do Nordeste (demais estados da Regi?o), mas ambas s?o diferentes das dimens?es fractais de redes completas e regulares hipot?ticas, o que demonstra que a distribui??o das esta??es pluviom?tricas n?o ? homog?nea. Estes resultados sugerem o estudo mais aprofundado deste m?todo de an?lise de dados pluviom?tricos, que, atrav?s da modelagem em Sistemas Complexos.Made available in DSpace on 2015-07-15T13:31:42Z (GMT). No. of bitstreams: 1 dissertacaoCharles.pdf: 2350650 bytes, checksum: 3a5a6710de4fe0f9f72e936ffc6d9a22 (MD5) Previous issue date: 2007-11-22application/pdfporUNIVERSIDADE ESTADUAL DE FEIRA DE SANTANAMestrado em Modelagem em Ci?ncias da Terra e do AmbienteUEFSBRCi?ncia AmbientalVariabilidade pluviom?tricaredes complexasfractais.Keywordsrainfall variabilitycomplex networksfractals.CNPQ::CIENCIAS EXATAS E DA TERRAO uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasilinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesisinfo:eu-repo/semantics/openAccessreponame:Biblioteca Digital de Teses e Dissertações da UEFSinstname:Universidade Estadual de Feira de Santana (UEFS)instacron:UEFSORIGINALdissertacaoCharles.pdfapplication/pdf2350650http://tede2.uefs.br:8080/bitstream/tede/53/1/dissertacaoCharles.pdf3a5a6710de4fe0f9f72e936ffc6d9a22MD51tede/532015-07-15 10:31:42.137oai:tede2.uefs.br:8080:tede/53Biblioteca Digital de Teses e Dissertaçõeshttp://tede2.uefs.br:8080/PUBhttp://tede2.uefs.br:8080/oai/requestbcuefs@uefs.br|| bcref@uefs.br||bcuefs@uefs.bropendoar:2015-07-15T13:31:42Biblioteca Digital de Teses e Dissertações da UEFS - Universidade Estadual de Feira de Santana (UEFS)false
dc.title.por.fl_str_mv O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
title O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
spellingShingle O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
Santana, Charles Novaes de
Variabilidade pluviom?trica
redes complexas
fractais.
Keywords
rainfall variability
complex networks
fractals.
CNPQ::CIENCIAS EXATAS E DA TERRA
title_short O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
title_full O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
title_fullStr O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
title_full_unstemmed O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
title_sort O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil
author Santana, Charles Novaes de
author_facet Santana, Charles Novaes de
author_role author
dc.contributor.advisor1.fl_str_mv Miranda, Jos? Garcia Vivas
dc.contributor.advisor1Lattes.fl_str_mv http://lattes.cnpq.br/1608472474770322
dc.contributor.authorID.fl_str_mv CPF:0024600530
dc.contributor.authorLattes.fl_str_mv http://lattes.cnpq.br/0342795948350883
dc.contributor.author.fl_str_mv Santana, Charles Novaes de
contributor_str_mv Miranda, Jos? Garcia Vivas
dc.subject.por.fl_str_mv Variabilidade pluviom?trica
redes complexas
fractais.
topic Variabilidade pluviom?trica
redes complexas
fractais.
Keywords
rainfall variability
complex networks
fractals.
CNPQ::CIENCIAS EXATAS E DA TERRA
dc.subject.eng.fl_str_mv Keywords
rainfall variability
complex networks
fractals.
dc.subject.cnpq.fl_str_mv CNPQ::CIENCIAS EXATAS E DA TERRA
description Brazil Northeast s climate is usually described as semi-arid, characterized by hard dry seasons intermingled by hard rainfall seasons. Some areas of Northeast present annual pluviometric measure about 400 mm in mean, while in others the annual pluviometric measure is about 2000 mm. Rain events result from interplay of several physical phenomena, most of which can be individually described on the basic laws of mechanics and thermodynamics in a rather adequate way. Because of this, a huge progress has been achieved in recent years in relation to weather forecast with the use of very precise algorithms in large scale computing resources. They take into account the variables that are relevant for the atmospheric and ocean circulation and input of large amount of physical data obtained from a dense set of stations scattered around the world. In order to improve the interpretation of the accurate data resulting from the description of atmospheric phenomena and rain events, it is necessary to proceed with sophisticated analyses of recorded and simulated data, as spatial and temporal statistical correlations, scale properties, topological properties of spatial event distribution, ad so on. They indicate the extent of statistical relevance of the data, local and global effects, typical patterns, and other topological features related to the phenomena.In this work, we explore the usefulness of complex network framework for the analysis and nderstanding of rain events, based solely on recorded data from a set of stations in Northeast Brazil. The method is inspired on a proposal to characterize actual sequences of earthquake events where, like precipitation phenomena, the available data stems from complex systems with a very large number of physical variables. The potential network nodes are the meteorological stations where the rain events have been recorded, while the network edges are placed according to rules that take into account temporal and spatial correlation criteria between events occurring at different stations, for a time span as large as one month. We evaluate usual network properties based on diameter, node degrees, clustering coefficient, minimal inter-node distance along network edges. This allows for a characterization of networks based on seasonality and on spatial span of the region where the stations are distributed. The obtained results are discussed, taking into account the known precipitation patterns of the investigated region. rainfall variability, complex networks, fractals.
publishDate 2007
dc.date.issued.fl_str_mv 2007-11-22
dc.date.available.fl_str_mv 2008-07-29
dc.date.accessioned.fl_str_mv 2015-07-15T13:31:42Z
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
dc.type.driver.fl_str_mv info:eu-repo/semantics/masterThesis
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dc.identifier.citation.fl_str_mv SANTANA, Charles Novaes de. O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil. 2007. 84 f. Disserta??o (Mestrado em Ci?ncia Ambiental) - UNIVERSIDADE ESTADUAL DE FEIRA DE SANTANA, Feira de Santana, 2007.
dc.identifier.uri.fl_str_mv http://localhost:8080/tede/handle/tede/53
identifier_str_mv SANTANA, Charles Novaes de. O uso de ferramentas fractais e redes complexas no estudo da variabilidade pluviom?etrica do Nordeste do Brasil. 2007. 84 f. Disserta??o (Mestrado em Ci?ncia Ambiental) - UNIVERSIDADE ESTADUAL DE FEIRA DE SANTANA, Feira de Santana, 2007.
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