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Article type: Research Article
Authors: Saini, Jagritia; * | Dutta, Maitreyeea | Marques, Gonçalob
Affiliations: [a] National Institute of Technical Teachers Training and Research, Chandigarh, India | [b] Polytechnic of Coimbra, Technology and Management School of Oliveira do Hospital, Rua General Santos Costa, Oliveira do Hospital, Portugal
Correspondence: [*] Corresponding author. Jagriti Saini, National Institute of Technical Teachers Training and Research, Chandigarh India. E-mail: jagritis1327@gmail.com; Maitreyee Dutta, E-mail: d_maitreyee@yahoo.co.in; Gonçalo Marques, E-mail: goncalosantosmarques@gmail.com.
Abstract: Indoor air pollution (IAP) has become a serious concern for developing countries around the world. As human beings spend most of their time indoors, pollution exposure causes a significant impact on their health and well-being. Long term exposure to particulate matter (PM) leads to the risk of chronic health issues such as respiratory disease, lung cancer, cardiovascular disease. In India, around 200 million people use fuel for cooking and heating needs; out of which 0.4% use biogas; 0.1% electricity; 1.5% lignite, coal or charcoal; 2.9% kerosene; 8.9% cow dung cake; 28.6% liquified petroleum gas and 49% use firewood. Almost 70% of the Indian population lives in rural areas, and 80% of those households rely on biomass fuels for routine needs. With 1.3 million deaths per year, poor air quality is the second largest killer in India. Forecasting of indoor air quality (IAQ) can guide building occupants to take prompt actions for ventilation and management on useful time. This paper proposes prediction of IAQ using Keras optimizers and compares their prediction performance. The model is trained using real-time data collected from a cafeteria in the Chandigarh city using IoT sensor network. The main contribution of this paper is to provide a comparative study on the implementation of seven Keras Optimizers for IAQ prediction. The results show that SGD optimizer outperforms other optimizers to ensure adequate and reliable predictions with mean square error = 0.19, mean absolute error = 0.34, root mean square error = 0.43, R2 score = 0.999555, mean absolute percentage error = 1.21665%, and accuracy = 98.87%.
Keywords: Indoor air quality, pollutants, prediction system, optimizers
DOI: 10.3233/JIFS-200259
Journal: Journal of Intelligent & Fuzzy Systems, vol. 39, no. 5, pp. 7053-7069, 2020
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