Prediction of indoor air ventilation performance using nonlinear autoregressive neural network in kindergarten

Nazzri, Muhammad Kamil (2023) Prediction of indoor air ventilation performance using nonlinear autoregressive neural network in kindergarten. [Student Project] (Unpublished)

Abstract

Indoor air pollution has become one of major issues that cause health issues towards the building occupants especially people from the sensitive group such as elderly and younger children. However, indoor air pollutants can be removed by providing adequate ventilation towards the building. Effective and adequate ventilation can help to dilute and removed the pollutants and providing healthier air for the building occupants to breath. Adequacy of ventilation can be determined by measuring the concentration of carbon dioxide (CO2 ) in the building as CO2 is widely used as indicator for ventilation. To determine the ventilation performance, a method of forecasting through modelling process using nonlinear autoregressive neural network (NARNN) is developed where CO2 concentration data that collected from kindergarten is used construct and find the best fitted model with suitable number neurons and hidden layers. This model can help to predict the future concentration trend of CO2 in kindergarten and determine the ventilation performance of the building. The concentration of CO2 in the building is decreasing through the operations hours indicating it has adequate ventilation. The dataset of CO2 concentration is used to developed a prediction model which consist of artificial neural network (ANN) structure and a model with 1-9-1 structure with data division of 80:20 is the best fitted model for forecasting as it has high accuracy and highly relevant to be used for prediction as it has the nearest R-value near to one. Indoor air quality need a special attention by multiple authorities and organization especially the building that have younger children as occupants. Poor indoor air quality can risk the health of the occupants and disrupt the comfort of occupants on doing their activities in the building. Modelling technique is one of relevant and advance method to forecast the quality of a building as it can help to determine future concentration of pollutants in the indoor environment.

Metadata

Item Type: Student Project
Creators:
Creators
Email / ID Num.
Nazzri, Muhammad Kamil
UNSPECIFIED
Contributors:
Contribution
Name
Email / ID Num.
Thesis advisor
Mohd Yatim, Siti Rohana
UNSPECIFIED
Subjects: R Medicine > RA Public aspects of medicine > Public health. Hygiene. Preventive Medicine > Environmental health. Including sewage disposal, air pollution, nuisances, water supply
Divisions: Universiti Teknologi MARA, Selangor > Puncak Alam Campus > Faculty of Health Sciences
Programme: Bachelor In Environmental Health and Safety (Hons)
Keywords: Indoor air ventilation, Nonlinear autoregressive neural network, Kindergarten
Date: January 2023
URI: https://ir.uitm.edu.my/id/eprint/124945
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