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<CreaDate>20220801</CreaDate>
<CreaTime>16275700</CreaTime>
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<idCitation>
<resTitle>Usos_Consuntivos_da_Agua_Microbacia_2020_Total</resTitle>
</idCitation>
<idAbs>Um uso é considerado consuntivo quando a água retirada é consumida, parcial ou totalmente, no processo a que se destina, não retornando diretamente ao corpo d'água. O consumo pode ocorrer por evaporação, transpiração, incorporação em produtos, consumo por seres vivos, dentre outros. No desenvolvimento desse estudo, foram analisados os métodos e as bases de dados utilizadas em estudos anteriores, incorporando os procedimentos considerados relevantes e propondo novos avanços consequentes da disponibilidade de novas bases de dados e de avanços tecnológicos para o processamento de informações. O Manual de Usos Consuntivos da Água detalha os caminhos percorridos para elaboração das estimativas. Os setores avaliados foram o abastecimento humano (urbano e rural), o abastecimento animal, a indústria de transformação, a mineração, a termoeletricidade e a agricultura irrigada. As estimativas foram realizadas até 2021 (diagnóstico), além de projeções até 2040 (prognóstico).</idAbs>
<searchKeys>
<keyword>demanda hídrica</keyword>
<keyword>usos consuntivos</keyword>
<keyword>microbacia</keyword>
<keyword>snirh</keyword>
</searchKeys>
<idPurp>Usos da Água por Microbacia - 2020 - Demanda Total</idPurp>
<idCredit>Agência Nacional de Águas e Saneamento Básico - ANA</idCredit>
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