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<CreaDate>20210408</CreaDate>
<CreaTime>19345700</CreaTime>
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<idCitation>
<resTitle>Temperatura_MAX_anual_hist_20km_canesm</resTitle>
</idCitation>
<idAbs>O projeto GEF-CGEE-CGPDI "Estudos de projeções de clima para a Região Integrada de Desenvolvimento do Distrito Federal e Entorno – RIDE", executado pelo INPE, gerou um conjunto expressivo de dados que foram incorporados ao banco de dados geográfico do SISDIA. Contemplam dados de simulação baseados no modelo climático global CanESM2, com periodicidade mensal e anual.
O arquivo tabular contempla o padrão de resolução espacial de 20 km e apresenta valores anuais de variáveis climáticas para o cenário de simulação “Histórico”, para o período de 1961 a 2005:
- Precipitação Total (prec) - mm/ano;
- Temperatura a 2 metros (tp2m) - °C;
- Radiação de Onda Curta Incidente à Superfície (ocis) - W/m²;
- Temperatura Máxima a 2 m (mxtp) - °C;
- Temperatura Mínima a 2 m (mntp) - °C;
- Umidade Relativa a 2 m (ur2m) - %;
- Vento Zonal a 10 metros (u10m) - m/s;
- Vento Meridional a 10 metros (v10m) - m/s;
- Vento Zonal a 100 metros (u100) - m/s;
- Vento Meridional a 100 metros (v100) - m/s.</idAbs>
<searchKeys>
<keyword>Ambiental</keyword>
<keyword> Clima</keyword>
<keyword> Temperatura Máxima</keyword>
</searchKeys>
<idPurp>Dados históricos anuais de temperatura máxima (1961 a 2005) - Resolução espacial de 20 km</idPurp>
<idCredit>INPE</idCredit>
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