Use este identificador para citar ou linkar para este item: http://repositorio.utfpr.edu.br/jspui/handle/1/39192
Título: Real-time indoor air quality (IAQ) monitoring system for smart buildings
Autor(es): Biondo, Elias Junior
Orientador(es): Nakano, Alberto Yoshihiro
Palavras-chave: Ar - Controle de qualidade
Conforto humano
Redes neurais (Computação)
Ar quality management
Human comfort
Neural networks (Computer science)
Data do documento: 2022
Editor: Instituto Politécnico de Bragança
Câmpus: Toledo
Citação: BIONDO, Elias Junior. Real-time indoor air quality (IAQ) monitoring system for smart buildings. 2022. Trabalho de Conclusão de Curso (Engenharia Eletrônica) - Universidade Tecnológica Federal do Paraná, Toledo, 2022.
Abstract: Indoor air quality (IAQ) is a term describing the air quality of a room, it refers to the health and comfort of the occupants. Normally, people spend around 90% of their time in indoor environments where the concentration of air pollutants, such CO, CO2, VOCs, SO2, O3 and NOx, may be two to five times — and occasionally, more than 100 times — higher than outdoor levels. According to the World Health Organization (WHO), the indoor air pollution is responsible for the deaths of 3.8 million people annually. It has been indicated that IAQ in residential areas or buildings is significantly affected by three primary factors: (i) Outdoor air quality, (ii) human activity in buildings, and (iii) building and construction materials, equipment, and furniture. In this contest, this work consist in a real time IAQ system to monitoring and control thermal comfort and gas concentration. The system has a data acquisition stage, where the data is measured by a set of sensors and then stored on InfluxDB database and displayed in Grafana. To track the behavior of the measured parameters, two machine learning algorithms are developed, a mathematical model linear regression, and an artificial intelligence model neural network. In a test made to see how precise were the prediction of the two models, linear regression model performed better then neural network, presenting cases of up to 99.7% and 98.1% of score prediction, respectively. After that, a test with smoke was done to validate the models where the results shows that both learning models can detect adverse cases. Finally, prediction data are storage on InfluxDB and displayed on Grafana to monitoring in real-time measured data and prediction data.
Descrição: O presente trabalho é resultado de um convênio de dupla diplomação com o Instituto Politécnico de Bragança (Portugal).
URI: http://repositorio.utfpr.edu.br/jspui/handle/1/39192
Aparece nas coleções:TD - Engenharia Eletrônica

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