A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster

The chemical industry is of paramount importance to the world economy and this industrial sector represents a substantial income source for developing countries. However, the chemical plants producing inside an industrial district pose a great threat to the surrounding atmospheric environment and hu...

Full description

Bibliographic Details
Main Authors: Zhengqiu Zhu, Bin Chen, Sihang Qiu, Rongxiao Wang, Yiping Wang, Liang Ma, Xiaogang Qiu
Format: Article
Language:English
Published: The Royal Society 2018-01-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.180889
id doaj-ebc642fe08a44069abcabf4e5bcb055c
record_format Article
spelling doaj-ebc642fe08a44069abcabf4e5bcb055c2020-11-25T04:00:19ZengThe Royal SocietyRoyal Society Open Science2054-57032018-01-015910.1098/rsos.180889180889A data-driven approach for optimal design of integrated air quality monitoring network in a chemical clusterZhengqiu ZhuBin ChenSihang QiuRongxiao WangYiping WangLiang MaXiaogang QiuThe chemical industry is of paramount importance to the world economy and this industrial sector represents a substantial income source for developing countries. However, the chemical plants producing inside an industrial district pose a great threat to the surrounding atmospheric environment and human health. Therefore, designing an appropriate and available air quality monitoring network (AQMN) is essential for assessing the effectiveness of deployed pollution-controlling strategies and facilities. As monitoring facilities located at inappropriate sites would affect data validity, a two-stage data-driven approach constituted of a spatio-temporal technique (i.e. Bayesian maximum entropy) and a multi-objective optimization model (i.e. maximum concentration detection capability and maximum dosage detection capability) is proposed in this paper. The approach aims at optimizing the design of an AQMN formed by gas sensor modules. Owing to the lack of long-term measurement data, our developed atmospheric dispersion simulation system was employed to generate simulated data for the above method. Finally, an illustrative case study was implemented to illustrate the feasibility of the proposed approach, and results imply that this work is able to design an appropriate AQMN with acceptable accuracy and efficiency.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.180889bayesian maximum entropymulti-objective optimization modelair quality monitoring networkatmospheric dispersion simulation system
collection DOAJ
language English
format Article
sources DOAJ
author Zhengqiu Zhu
Bin Chen
Sihang Qiu
Rongxiao Wang
Yiping Wang
Liang Ma
Xiaogang Qiu
spellingShingle Zhengqiu Zhu
Bin Chen
Sihang Qiu
Rongxiao Wang
Yiping Wang
Liang Ma
Xiaogang Qiu
A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
Royal Society Open Science
bayesian maximum entropy
multi-objective optimization model
air quality monitoring network
atmospheric dispersion simulation system
author_facet Zhengqiu Zhu
Bin Chen
Sihang Qiu
Rongxiao Wang
Yiping Wang
Liang Ma
Xiaogang Qiu
author_sort Zhengqiu Zhu
title A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
title_short A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
title_full A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
title_fullStr A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
title_full_unstemmed A data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
title_sort data-driven approach for optimal design of integrated air quality monitoring network in a chemical cluster
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2018-01-01
description The chemical industry is of paramount importance to the world economy and this industrial sector represents a substantial income source for developing countries. However, the chemical plants producing inside an industrial district pose a great threat to the surrounding atmospheric environment and human health. Therefore, designing an appropriate and available air quality monitoring network (AQMN) is essential for assessing the effectiveness of deployed pollution-controlling strategies and facilities. As monitoring facilities located at inappropriate sites would affect data validity, a two-stage data-driven approach constituted of a spatio-temporal technique (i.e. Bayesian maximum entropy) and a multi-objective optimization model (i.e. maximum concentration detection capability and maximum dosage detection capability) is proposed in this paper. The approach aims at optimizing the design of an AQMN formed by gas sensor modules. Owing to the lack of long-term measurement data, our developed atmospheric dispersion simulation system was employed to generate simulated data for the above method. Finally, an illustrative case study was implemented to illustrate the feasibility of the proposed approach, and results imply that this work is able to design an appropriate AQMN with acceptable accuracy and efficiency.
topic bayesian maximum entropy
multi-objective optimization model
air quality monitoring network
atmospheric dispersion simulation system
url https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.180889
work_keys_str_mv AT zhengqiuzhu adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT binchen adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT sihangqiu adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT rongxiaowang adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT yipingwang adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT liangma adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT xiaogangqiu adatadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT zhengqiuzhu datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT binchen datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT sihangqiu datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT rongxiaowang datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT yipingwang datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT liangma datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
AT xiaogangqiu datadrivenapproachforoptimaldesignofintegratedairqualitymonitoringnetworkinachemicalcluster
_version_ 1724451321755467776