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Sinergismo entre eventos clim?ticos extremos, desmatamento e aumento da suscetibilidade a inc?ndios florestais no Estado do Acre / Synergism between extreme weather events, deforestation and increased susceptibility and risk of forest fires in Acre state

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Previous issue date: 2016-02-29 / This research analyzes the temporal and spatial variables that can affect the distribution and
frequency of hot spots in the state of Acre. Given the scarcity of regular spatial information
and long time series for the study area, it was initially carried out a validation between air
temperature and precipitation data in Global Grid Precipitation Climatology Centre (GPCC),
University of Delaware (UDEL) and Global Historical Climatology Network (GHCN) with
data from five Weather Stations Mainstream (EMC) to Acre and region, through an analysis
of precision and accuracy of the data. Regarding precipitation, it was found that both the
GPCC UDEL represented as the average variability significantly throughout the series. In
relation to the air temperature standards, although the accuracy of GHCN and UDEL was low,
it was satisfactory accuracy according to statistical methods. Assuming that the extreme
weather events increase susceptibility to forest fires, then it was carried out an analysis of the
influence of climate variability modes in generating categorized scenarios dry or wet years,
based on the Standardized Precipitation Index (SPI) and Harmonic and Spectral (AHE). It was
found that the AHE is not able to identify the intensity of the events, but was satisfactory in
the signal cycles identifying the anomaly, i.e., whether the abnormality SPI was positive or
negative. It was found that the Atlantic signal had greater influence on the precipitation of the
Pacific. For the regions that correspond to Groups 1, 2 and 3 there was an inverse pattern for
precipitation in relation to ENSO compared to the North and East Amazon. Thus, it identified
negative precipitation anomalies during La Ni?a and El Ni?o events during positive events for
the dry and rainy seasons. For the area corresponding to the effect Group 4 was otherwise.
The natural climate variability patterns identified in this study may contribute to the
establishment of strategies for prevention and adaptation to extreme events. Finally, in
Chapter 3 was carried out an analysis of the spatial and temporal patterns of the fire in Acre,
through a discussion of various climatic, environmental and anthropogenic variables that
contribute to its occurrence. Thus, through the Random Forest algorithm were generated
susceptibility maps that estimated the probability of fires and burned in the state. . It was
found that although drought triggers an increase in the number of hot spots, its spatial pattern
is more related to human factors such as the proximity areas already cleared. / A presente pesquisa analisa as vari?veis temporais e espaciais que podem afetar a
distribui??o e frequ?ncia dos focos de calor no estado do Acre. Diante da escassez de dados
regularmente espacializados e com longa s?rie temporal para a ?rea de estudo, inicialmente
foi realizada uma valida??o entre os dados de temperatura do ar e precipita??o em grade do
Global Precipitation Climatology Centre (GPCC), Universidade de Delaware (UDEL) e
Global Historical Climatology Network (GHCN) com dados de cinco Esta??es
Meteorol?gicas Convencionais (EMC) para o Acre e regi?o, atrav?s de uma an?lise da
precis?o e exatid?o dos dados. Em rela??o ? precipita??o, verificou-se que tanto o GPCC
quanto da UDEL representaram significativamente as variabilidades m?dias ao longo da s?rie.
Em rela??o aos padr?es da temperatura do ar, embora a precis?o do GHCN e da UDEL tenha
sido baixa, a exatid?o foi satisfat?ria segundo os m?todos estat?sticos. Partindo do pressuposto
que os eventos clim?ticos extremos aumentam a suscetibilidade a inc?ndios florestais, em
seguida foi realizada uma an?lise da influ?ncia dos modos de variabilidade clim?tica na
gera??o de cen?rios categorizados de anos secos ou ?midos, baseado no ?ndice de
Precipita??o Padronizado (SPI) e na An?lise Harm?nica e Espectral (AHE). Verificou-se que a
AHE n?o foi capaz de identificar a intensidade dos eventos, mas mostrou-se satisfat?ria na
identifica??o dos ciclos de sinal da anomalia, ou seja, se anomalia do SPI foi positiva ou
negativa. Verificou-se que o sinal do Atl?ntico teve maior influ?ncia sobre a precipita??o do
que o Pac?fico. Para as regi?es que correspondem os Grupos 1, 2 e 3 observou-se um padr?o
inverso para a precipita??o em rela??o ao ENOS, quando comparado com a Amaz?nia Norte e
Oriental. Assim, foram identificadas anomalias negativas de precipita??o durante eventos de
La Ni?a e positivas durante eventos de El Ni?o para as esta??es seca e chuvosa. Para a regi?o
que corresponde ao Grupo 4 o efeito foi contr?rio. Os padr?es de variabilidade natural do
clima identificados nesse trabalho podem contribuir para o estabelecimento de estrat?gias de
preven??o e adapta??o aos eventos extremos. Finalmente, no Cap?tulo 3 foi realizada uma
an?lise sobre o padr?o espacial e temporal do fogo no Acre, atrav?s de uma discuss?o sobre
diversas vari?veis clim?ticas, ambientais e antr?picas que contribuem para a sua ocorr?ncia.
Assim, por meio do algoritmo Random Forest foram gerados mapas de suscetibilidade que
estimaram a probabilidade de ocorr?ncia de inc?ndios e queimadas no estado. Verificou-se
que, embora a estiagem propicie um aumento do n?mero de focos de calor, o seu padr?o
espacial est? mais relacionado a fatores antr?picos, tais como a proximidade de ?reas j? desmatadas.

Identiferoai:union.ndltd.org:IBICT/oai:localhost:jspui/1336
Date29 February 2016
CreatorsTostes, Juliana de Oliveira
ContributorsFrancelino, M?rcio Rocha, Oliveira J?nior, Jos? Francisco, Fernandes Filho, Elp?dio In?cio, Amaral, Eufran Ferreira do, Lyra, Gustavo Bastos, Cataldi, M?rcio
PublisherUniversidade Federal Rural do Rio de Janeiro, Programa de P?s-Gradua??o em Ci?ncias Ambientais e Florestais, UFRRJ, Brasil, Instituto de Florestas
Source SetsIBICT Brazilian ETDs
LanguagePortuguese
Detected LanguageEnglish
Typeinfo:eu-repo/semantics/publishedVersion, info:eu-repo/semantics/doctoralThesis
Formatapplication/pdf
Sourcereponame:Biblioteca Digital de Teses e Dissertações da UFRRJ, instname:Universidade Federal Rural do Rio de Janeiro, instacron:UFRRJ
Rightsinfo:eu-repo/semantics/openAccess
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