Prediction models of bioaerosols inside office buildings: A field study investigation

Author:

Jiang Dong12,Gong Xiaoqiang3ORCID,Xu Zhengsong2,Yuan Kai2,Bu Zengwen4

Affiliation:

1. Department of Mathematics and Statistics, Zhejiang Gongshang University, Hangzhou, China

2. Department of Economics and Management, Bozhou University, Bozhou, China

3. Department of Electronics and information engineering, Bozhou University, Bozhou, China

4. Shenzhen Jindian Construction Technology Co., Ltd, Shenzhen, China

Abstract

Bioaerosols formed by microorganisms in the air directly affect people’s health. The air quality in an office building in Shenzhen, China, is investigated and pollutant levels measured on 36 occasions; six times for each of six indoor spaces. A relationship between indoor bioaerosols and environmental factors was determined using both linear regression analysis and Poisson regression analysis. Our results and analysis indicate that linear regression is a poor predictor for the concentration of bioaerosols based on a single indicator. In contrast, Poisson regression can better predict the concentration of bioaerosols, and PM10 may be the indicator with the greatest impact on bioaerosols. As a result, a simple, fast, and low-cost online monitoring method for monitoring indoor bioaerosols is developed and reported. Our paper provides first-hand basic data to predict the indoor bioaerosol concentration and helps to formulate appropriate monitoring guidelines. The proposed method offers more practical values compared to existing studies as our prediction model facilitates estimation of the concentration of bioaerosols at low cost. Additionally, due to the current maturity and low cost of indoor environmental sensors, the proposed method is suitable for large-scale deployment for most buildings. Practical application Based on measurement data from a real office building, our investigation explores the relationship between indoor microorganisms and building environmental indicators through a combination of probability analysis and actual measurement. We establish a novel indoor microbial prediction model using the Poisson regression model. Our work presents an effective, low-cost, method for estimating the concentration of bioaerosols and discusses the possibility for large-scale deployment of microbial monitoring equipment inside buildings which may then support real-time monitoring of indoor microbial concentration to provide healthy indoor environments for personnel.

Funder

Practical Research on Low Carbon and Healthy Building System in Fujian and Guangdong for China Construction Fangcheng Investment& Development Group Co., Ltd

Research on Intelligent Systems of Healthy Residential Buildings for Smart Building Research Center of China Real Estate Association

Research on Industrial Transfer, Environmental Regulation and Industrial Ecological Development: A Case Study of Anhui Province

Development from the Perspective of Regional Economic Development and Carbon Tax Mechanism Constraints--Taking Anhui Province

Research and Verification of Epidemic Prevention System of Residential Buildings

Publisher

SAGE Publications

Subject

Building and Construction

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