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<resTitle>DFCI_Severidade</resTitle>
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<idAbs>&lt;div&gt;Severidade calculada com base no RdNBR de imagens satélite Sentinel 2A e 2B. Limiares de classe de severidade RdNBR com base no estudo do Botella-Martínez y Fernández-Manso e a adaptação feita pela CTI no relatório de análise aos incêndios de Pedrógão e Góis. Botella-Martínez definiu limiares para 3 classes:1) Não queimado / Baixa Severidade2) Baixa / Moderada Severidade3) Moderada / Alta Severidade sendo que a Comissão Técnica Independente estratificou a classe de severidade 3 (Alta), em Alta / Muito Alta / Extrema. A classificação final está definida de acordo com os seguintes limiares: 230; 475; 835; 1200 e 1400.&lt;/div&gt;&lt;div&gt;&lt;br /&gt;&lt;/div&gt;&lt;div&gt;Severidade 2019 e 2020&lt;/div&gt;&lt;div&gt;DFCI - Severidade Acumulada (2019/2020/ano Corrente), 5 classes (em compilação) Severidade calculada com base no dNBR de imagens satélite Sentinel 2A de acordo com a seguinte reclassificação:-1500 a -250 --&amp;amp;gt; 1-250 a -100 --&amp;amp;gt;2-100 a 100 --&amp;amp;gt;3100 a 270 --&amp;amp;gt;4270 a 440 --&amp;amp;gt;5440 a 660 --&amp;amp;gt; 6660 a 1350 --&amp;amp;gt; 7 Modelo de dados ajustado em 20 de junho de 2020 -Descrição dos campos principais: [Legenda] - legenda do grau de severidade {Classe] - classe de severidade com base na reclassificação acima descrita [Cod_SGIF] - Código da ocorrência no SGIF [Area_ha]- Área ardida em hectares [Id_REE] - código de REE que está associado à área ardida [Ano] - ano de ocorrência do incêndio&lt;/div&gt;</idAbs>
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      <keyword>MapServer</keyword>
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    <idPurp>Severidade ano corrente até ao ano 2021</idPurp>
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