Literature DB >> 31220370

Machine learning and statistical models for predicting indoor air quality.

Wenjuan Wei1, Olivier Ramalho1, Laeticia Malingre1, Sutharsini Sivanantham1, John C Little2, Corinne Mandin1.   

Abstract

Indoor air quality (IAQ), as determined by the concentrations of indoor air pollutants, can be predicted using either physically based mechanistic models or statistical models that are driven by measured data. In comparison with mechanistic models mostly used in unoccupied or scenario-based environments, statistical models have great potential to explore IAQ captured in large measurement campaigns or in real occupied environments. The present study carried out the first literature review of the use of statistical models to predict IAQ. The most commonly used statistical modeling methods were reviewed and their strengths and weaknesses discussed. Thirty-seven publications, in which statistical models were applied to predict IAQ, were identified. These studies were all published in the past decade, indicating the emergence of the awareness and application of machine learning and statistical modeling in the field of IAQ. The concentrations of indoor particulate matter (PM2.5 and PM10 ) were the most frequently studied parameters, followed by carbon dioxide and radon. The most popular statistical models applied to IAQ were artificial neural networks, multiple linear regression, partial least squares, and decision trees.
© 2019 John Wiley & Sons A/S. Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  IAQ; artificial neural networks; data mining; partial least squares; particulate matter; regression

Mesh:

Substances:

Year:  2019        PMID: 31220370     DOI: 10.1111/ina.12580

Source DB:  PubMed          Journal:  Indoor Air        ISSN: 0905-6947            Impact factor:   5.770


  6 in total

1.  AI-big data analytics for building automation and management systems: a survey, actual challenges and future perspectives.

Authors:  Yassine Himeur; Mariam Elnour; Fodil Fadli; Nader Meskin; Ioan Petri; Yacine Rezgui; Faycal Bensaali; Abbes Amira
Journal:  Artif Intell Rev       Date:  2022-10-15       Impact factor: 9.588

2.  A Time-Varying Model for Predicting Formaldehyde Emission Rates in Homes.

Authors:  Haoran Zhao; Iain S Walker; Michael D Sohn; Brennan Less
Journal:  Int J Environ Res Public Health       Date:  2022-05-28       Impact factor: 4.614

Review 3.  Assessing Human Exposure to SVOCs in Materials, Products, and Articles: A Modular Mechanistic Framework.

Authors:  Clara M A Eichler; Elaine A Cohen Hubal; Ying Xu; Jianping Cao; Chenyang Bi; Charles J Weschler; Tunga Salthammer; Glenn C Morrison; Antti Joonas Koivisto; Yinping Zhang; Corinne Mandin; Wenjuan Wei; Patrice Blondeau; Dustin Poppendieck; Xiaoyu Liu; Christiaan J E Delmaar; Peter Fantke; Olivier Jolliet; Hyeong-Moo Shin; Miriam L Diamond; Manabu Shiraiwa; Andreas Zuend; Philip K Hopke; Natalie von Goetz; Markku Kulmala; John C Little
Journal:  Environ Sci Technol       Date:  2020-12-15       Impact factor: 9.028

4.  Improving the Indoor Air Quality in Nursery Buildings in United Arab Emirates.

Authors:  Mohammad Arar; Chuloh Jung
Journal:  Int J Environ Res Public Health       Date:  2021-11-18       Impact factor: 3.390

5.  Updating Indoor Air Quality (IAQ) Assessment Screening Levels with Machine Learning Models.

Authors:  Ling-Tim Wong; Kwok-Wai Mui; Tsz-Wun Tsang
Journal:  Int J Environ Res Public Health       Date:  2022-05-08       Impact factor: 3.390

6.  Design and Implementation of SEMAR IoT Server Platform with Applications.

Authors:  Yohanes Yohanie Fridelin Panduman; Nobuo Funabiki; Pradini Puspitaningayu; Minoru Kuribayashi; Sritrusta Sukaridhoto; Wen-Chung Kao
Journal:  Sensors (Basel)       Date:  2022-08-26       Impact factor: 3.847

  6 in total

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