Simulação de trânsitos intraurbanos em cidades médias brasileiras:inferences for sustainable urban planning in Uberlândia, Minas Gerais, Brazil
DOI:
https://doi.org/10.29393/UR15-6STRA30006Palabras clave:
Urban planning, Agent-Based Modelling, Smart City, Urban Density, Artificial IntelligenceResumen
Os caóticos processos de urbanização no Brasil acarretaram em inúmeros problemas no espaço urbano atual, como o espraiamento das cidades. A partir desta problemática, emerge a necessidade de se aperfeiçoar métodos de planejamento urbano capazes de garantir o desenvolvimento sustentável. Nesse sentido, entendendo que uma possível solução seja a densificação urbana, o presente trabalho com recorte no bairro Santa Maria em Uberlândia-MG, Brasil, simula com base em agentes a repercussão desta densificação, mais especificamente seus impactos diretos no trânsito local. Os resultados obtidos expressam que a infraestrutura urbana atual não seria capaz de comportar tal crescimento populacional, ocasionando novos problemas como conurbação e sobrecarregamento dos serviços. Portanto, apesar de assertivo, o adensamento deverá ocorrer em etapas e com distribuição uniforme pela cidade, garantindo que nenhuma região sobrecarregue outra para compensar.
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Derechos de autor 2022 Raphaela Ferreira, Karen Santini Dias Passos, André Luís de Araujo
Esta obra está bajo una licencia internacional Creative Commons Atribución 4.0.
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