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<idAbs>Rede multimodal utilizada para modelagem do transporte de cargas PELT-RS 2014 com alocação de carga em toneladas/ano, conforme modelo desenvolvido para cenário de 2019 sem implantação de projetos.</idAbs>
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<keyword>Modelagem de Transportes</keyword>
<keyword>Rede Ferroviária</keyword>
<keyword>PELT</keyword>
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<idPurp>Modelo produzido a partir da compilação das redes rodoviária, ferroviária e hidroviária existentes em 2014. Desenvolvido através do contrato com o Consórcio STE-SD-Dynatest entre 2015 e 2017.</idPurp>
<idCredit>Secretaria de Logística e Transportes - RS</idCredit>
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<resTitle>PELT_Rede_Multi_Peso_2019_SP</resTitle>
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