Gestão de resíduos sólidos urbanos: estudo de caso em um município do estado do Rio De Janeiro

Thesis Subjects > Education Ibero-american International University > Teaching > Master's Final Projects Closed Portuguese De acordo com o crescimento da população humana, novas estratégias de gestão de resíduos devem ser elaboradas com o intuito principal de agredir menos o meio ambiente diante do despejo de resíduos no solo. Dessa forma, este estudo tem o objetivo geral de apresentar uma visão abrangente das estratégias existentes de gestão de resíduos sólidos e apresentar um estudo de caso em um município brasileiro, já como objetivos específicos foi proposto: fornecer uma visão geral dos cenários de gestão de resíduos prevalecentes em diferentes países; descrever de forma abrangente as tecnologias atuais, inovações estratégicas e ferramentas de monitoramento; apresentar um estudo de caso demonstrando como funciona a gestão de resíduos sólidos em um município brasileiro; e expor recomendações para a melhora do processo de gestão de resíduos sólidos no município. Com relação a metodologia utilizada na elaboração do presente estudo, primeiramente realizou-se uma pesquisa bibliográfica exploratória com o intuito de embasar teoricamente o estudo, essa pesquisa realizou-se por meio das seguintes bases de dados científicos online: Google Scholar, ScienceDirect, Scopus e ScientificElectronic Library Online (SciELO), posteriormente utilizou-se o método de estudo de caso para explicar como é realizada a gestão de resíduos sólidos urbanos do município de Barra Mansa, situado na Região Sul Fluminense do estado do Rio de Janeiro. O estudo avaliou como é realizada a coleta e disposição dos resíduos sólidos urbanos municipais, e mostrou que tanto o processo de coleta quanto a disposição no aterro são realizadas de maneira eficaz, com os equipamentos e equipes adequadas. Foi aplicado um questionário com participação da população local, a fim de avaliar a percepção da população acerca das atividades realizadas no local. Por fim, pode-se concluir que a falta de equipamentos de proteção individual auricular para os coletores não pode ser negligenciada, os resíduos dispostos no aterro devem passar por um processo de reciclagem antes de aterrados, e a população ainda não está bem informada a respeito das atividades que são realizadas, o que mostra que é preciso desenvolver mais atividades que envolvam os habitantes e uma melhor divulgação do trabalho. metadata de Souza, Andrea mail andreya.s.reis@gmail.com (2022) Gestão de resíduos sólidos urbanos: estudo de caso em um município do estado do Rio De Janeiro. Master's thesis, UNSPECIFIED.

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Abstract

De acordo com o crescimento da população humana, novas estratégias de gestão de resíduos devem ser elaboradas com o intuito principal de agredir menos o meio ambiente diante do despejo de resíduos no solo. Dessa forma, este estudo tem o objetivo geral de apresentar uma visão abrangente das estratégias existentes de gestão de resíduos sólidos e apresentar um estudo de caso em um município brasileiro, já como objetivos específicos foi proposto: fornecer uma visão geral dos cenários de gestão de resíduos prevalecentes em diferentes países; descrever de forma abrangente as tecnologias atuais, inovações estratégicas e ferramentas de monitoramento; apresentar um estudo de caso demonstrando como funciona a gestão de resíduos sólidos em um município brasileiro; e expor recomendações para a melhora do processo de gestão de resíduos sólidos no município. Com relação a metodologia utilizada na elaboração do presente estudo, primeiramente realizou-se uma pesquisa bibliográfica exploratória com o intuito de embasar teoricamente o estudo, essa pesquisa realizou-se por meio das seguintes bases de dados científicos online: Google Scholar, ScienceDirect, Scopus e ScientificElectronic Library Online (SciELO), posteriormente utilizou-se o método de estudo de caso para explicar como é realizada a gestão de resíduos sólidos urbanos do município de Barra Mansa, situado na Região Sul Fluminense do estado do Rio de Janeiro. O estudo avaliou como é realizada a coleta e disposição dos resíduos sólidos urbanos municipais, e mostrou que tanto o processo de coleta quanto a disposição no aterro são realizadas de maneira eficaz, com os equipamentos e equipes adequadas. Foi aplicado um questionário com participação da população local, a fim de avaliar a percepção da população acerca das atividades realizadas no local. Por fim, pode-se concluir que a falta de equipamentos de proteção individual auricular para os coletores não pode ser negligenciada, os resíduos dispostos no aterro devem passar por um processo de reciclagem antes de aterrados, e a população ainda não está bem informada a respeito das atividades que são realizadas, o que mostra que é preciso desenvolver mais atividades que envolvam os habitantes e uma melhor divulgação do trabalho.

Document Type: Thesis (Master's)
Keywords: Gestão de resíduos, Reciclagem, Disposição final, Aterro sanitário, Resíduos sólidos urbanos
Subject classification: Subjects > Education
Divisions: Ibero-american International University > Teaching > Master's Final Projects
Deposited: 30 Nov 2023 23:30
Last Modified: 30 Nov 2023 23:30
URI: https://repositorio.unib.org/id/eprint/1076

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