Development of time series models for various pollutants in Bangalore city using the Akaike information criterion

Pollution levels in developing countries, such as India, have become a major source of health problems. They need to be monitored and controlled. Bangalore, one of the major cities in India, faces a huge amount of pollution. Due to the dire need to control these pollutants, a sound...

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Main Authors: Vivekanand Venkataraman, Shashank Prasad, Balakrishna Aswathanarayana, Susmith Barigidad, Vinayak Nayak, Sai Tarun Kumar N
Format: Article
Language:English
Published: Khon Kaen University 2020-09-01
Series:Engineering and Applied Science Research
Subjects:
Online Access:https://ph01.tci-thaijo.org/index.php/easr/article/download/220854/164893/
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spelling doaj-a8aabd6cb2ab40009ce0f9ecbb52aeca2020-11-25T04:02:37ZengKhon Kaen UniversityEngineering and Applied Science Research2539-61612539-62182020-09-0147324926310.14456/easr.2020.28Development of time series models for various pollutants in Bangalore city using the Akaike information criterionVivekanand VenkataramanShashank PrasadBalakrishna AswathanarayanaSusmith BarigidadVinayak NayakSai Tarun Kumar NPollution levels in developing countries, such as India, have become a major source of health problems. They need to be monitored and controlled. Bangalore, one of the major cities in India, faces a huge amount of pollution. Due to the dire need to control these pollutants, a sound mathematical modeling approach needs to be created for forecasting, controlling and monitoring. One such approach is time series modeling. The current work addresses a time series model that has been developed for the major pollutants in Bangalore city. These pollutants include PM10, PM2.5, NOx and SO2. The models used vary from AR (autoregressive), ARMA (autoregressive moving average) and ARIMA (autoregressive integrated moving average) for modeling air pollution in Bangalore city. Additionally, the selection of the best models was based on the Akaike Information Criterion, p-value and Box-Pierce test. Various steps were followed to build the model, which included identification of missing and extreme values followed by creating an appropriate imputing method and then identification of time series models using autocorrelation and partial autocorrelation plots to obtain various time series models. The best time series models were chosen based on the Akaike Information criterion (AIC) and various other statistical tests. https://ph01.tci-thaijo.org/index.php/easr/article/download/220854/164893/time seriesair pollutionakaike information criterionarimastatistics
collection DOAJ
language English
format Article
sources DOAJ
author Vivekanand Venkataraman
Shashank Prasad
Balakrishna Aswathanarayana
Susmith Barigidad
Vinayak Nayak
Sai Tarun Kumar N
spellingShingle Vivekanand Venkataraman
Shashank Prasad
Balakrishna Aswathanarayana
Susmith Barigidad
Vinayak Nayak
Sai Tarun Kumar N
Development of time series models for various pollutants in Bangalore city using the Akaike information criterion
Engineering and Applied Science Research
time series
air pollution
akaike information criterion
arima
statistics
author_facet Vivekanand Venkataraman
Shashank Prasad
Balakrishna Aswathanarayana
Susmith Barigidad
Vinayak Nayak
Sai Tarun Kumar N
author_sort Vivekanand Venkataraman
title Development of time series models for various pollutants in Bangalore city using the Akaike information criterion
title_short Development of time series models for various pollutants in Bangalore city using the Akaike information criterion
title_full Development of time series models for various pollutants in Bangalore city using the Akaike information criterion
title_fullStr Development of time series models for various pollutants in Bangalore city using the Akaike information criterion
title_full_unstemmed Development of time series models for various pollutants in Bangalore city using the Akaike information criterion
title_sort development of time series models for various pollutants in bangalore city using the akaike information criterion
publisher Khon Kaen University
series Engineering and Applied Science Research
issn 2539-6161
2539-6218
publishDate 2020-09-01
description Pollution levels in developing countries, such as India, have become a major source of health problems. They need to be monitored and controlled. Bangalore, one of the major cities in India, faces a huge amount of pollution. Due to the dire need to control these pollutants, a sound mathematical modeling approach needs to be created for forecasting, controlling and monitoring. One such approach is time series modeling. The current work addresses a time series model that has been developed for the major pollutants in Bangalore city. These pollutants include PM10, PM2.5, NOx and SO2. The models used vary from AR (autoregressive), ARMA (autoregressive moving average) and ARIMA (autoregressive integrated moving average) for modeling air pollution in Bangalore city. Additionally, the selection of the best models was based on the Akaike Information Criterion, p-value and Box-Pierce test. Various steps were followed to build the model, which included identification of missing and extreme values followed by creating an appropriate imputing method and then identification of time series models using autocorrelation and partial autocorrelation plots to obtain various time series models. The best time series models were chosen based on the Akaike Information criterion (AIC) and various other statistical tests.
topic time series
air pollution
akaike information criterion
arima
statistics
url https://ph01.tci-thaijo.org/index.php/easr/article/download/220854/164893/
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