Gerenciamento de projetos e obras de construção de linhas de transmissão e subestações de distribuição, estudo do caso dos estados e Rondônia e Acre

Tesis Materias > Ingeniería Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster Cerrado Portugués O setor de construção corresponde a cerca de metade dos investimentos nacionais, destacando os empreendimentos do setor elétrico como um dos mais relevantes para a sociedade, sendo a boa gestão dos recursos disponíveis, um meio para obtenção de melhores desfechos. Contudo, a escassa gama de conteúdo bibliográfico acerca desse tópico, ainda é uma constante para o ramo, vertente essa que endossa este documento. O problema em tela discorre, principalmente, das extrapolações de custos e prazos, comumente observadas em empreendimentos do setor elétrico. Nos estados de Rondônia e Acre, essa situação se agrava em virtude da demanda reprimida a ser superada em um espaço temporal limitado e orçamento enxuto, e este trabalho buscou entender o motivo pelo qual ocorrem falhas na gestão das obras de infraestrutura no sistema elétrico nos estados de Rondônia e Acre. Para tal, foi utilizada uma metodologia de pesquisa não experimental, com abordagem mista do tipo compreensiva, com finalidade projetiva com estudo de caso e proposta de intervenção. Neste prisma, a pesquisa detalhada dos casos sinalizou resultados insuficientes e pontos verificar pontos de melhoria e oportunidade em termos de aprimoramento do gerenciamento deste tipo de projeto. Como forma de intervenção, é apresentado neste trabalho o plano de gerenciamento para construção de linhas de transmissão e subestações, com a análise dos casos de Rondônia e Acre, com as informações bases necessárias para a aplicação de técnicas de gestão de projetos e para a obtenção dos melhores resultados possíveis. O presente documento é sustentado pela experiência do autor na coordenação de obras de infraestrutura do sistema elétrico, orientado pelas boas práticas em projetos recomendadas pelo Guia PMBOK® e pelo conteúdo absorvido no discorrer do programa de Metrado em Desenho, Gestão e Direção de Projetos, com o propósito de elaboração de um sólido plano de gerenciamento para esta demanda. metadata Braga de Brito, Tomás mail tomasbbrito@gmail.com (2022) Gerenciamento de projetos e obras de construção de linhas de transmissão e subestações de distribuição, estudo do caso dos estados e Rondônia e Acre. Masters thesis, SIN ESPECIFICAR.

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Resumen

O setor de construção corresponde a cerca de metade dos investimentos nacionais, destacando os empreendimentos do setor elétrico como um dos mais relevantes para a sociedade, sendo a boa gestão dos recursos disponíveis, um meio para obtenção de melhores desfechos. Contudo, a escassa gama de conteúdo bibliográfico acerca desse tópico, ainda é uma constante para o ramo, vertente essa que endossa este documento. O problema em tela discorre, principalmente, das extrapolações de custos e prazos, comumente observadas em empreendimentos do setor elétrico. Nos estados de Rondônia e Acre, essa situação se agrava em virtude da demanda reprimida a ser superada em um espaço temporal limitado e orçamento enxuto, e este trabalho buscou entender o motivo pelo qual ocorrem falhas na gestão das obras de infraestrutura no sistema elétrico nos estados de Rondônia e Acre. Para tal, foi utilizada uma metodologia de pesquisa não experimental, com abordagem mista do tipo compreensiva, com finalidade projetiva com estudo de caso e proposta de intervenção. Neste prisma, a pesquisa detalhada dos casos sinalizou resultados insuficientes e pontos verificar pontos de melhoria e oportunidade em termos de aprimoramento do gerenciamento deste tipo de projeto. Como forma de intervenção, é apresentado neste trabalho o plano de gerenciamento para construção de linhas de transmissão e subestações, com a análise dos casos de Rondônia e Acre, com as informações bases necessárias para a aplicação de técnicas de gestão de projetos e para a obtenção dos melhores resultados possíveis. O presente documento é sustentado pela experiência do autor na coordenação de obras de infraestrutura do sistema elétrico, orientado pelas boas práticas em projetos recomendadas pelo Guia PMBOK® e pelo conteúdo absorvido no discorrer do programa de Metrado em Desenho, Gestão e Direção de Projetos, com o propósito de elaboração de um sólido plano de gerenciamento para esta demanda.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Plano de Gerenciamento de Projetos, Gestão de Obras de Construção, Linhas de Transmissão, Subestações de Distribuição, Estados de Rondônia e Acre
Clasificación temática: Materias > Ingeniería
Divisiones: Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Depositado: 07 Dic 2023 23:30
Ultima Modificación: 07 Dic 2023 23:30
URI: https://repositorio.unib.org/id/eprint/2538

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