Application of Step Wise Regression Analysis in Predicting Future Particulate Matter Concentration Episode

被引:0
|
作者
Amina Nazif
Nurul Izma Mohammed
Amirhossein Malakahmad
Motasem S. Abualqumboz
机构
[1] Universiti Teknologi PETRONAS,Department of Civil and Environmental Engineering
来源
关键词
Air pollution; Particulate matter; Daily average forecast; Step wise regression analysis; Persistence model;
D O I
暂无
中图分类号
学科分类号
摘要
Particulate matter is an air pollutant that has resulted in tremendous health effects to the exposed populace. Air quality forecasting is an established process where air pollutants particularly, particulate matter (PM10) concentration is predicted in advance, so that adequate measures are implemented to reduce the health effect of PM10 to the barest level. The present study used daily average PM10 concentration and meteorological parameters (temperature, humidity, wind speed and wind direction) for 5 years (2006–2010) from three industrial air quality monitoring stations in Malaysia (Balok Baru, Tasek and Paka). Time series plot was used to assess PM10 pollution trend in the industrial areas. Additionally, step wise regression (SWR) analysis was used to predict next day PM10 concentrations for the three industrial areas. The SWR method was compared with a persistence model to assess its predictive capabilities. The results for the trend analysis showed that, Balok Baru (BB) had higher PM10 concentration levels, having high values in 2006, 2007 and 2009. These values were higher than the Malaysian Ambient Air Quality Guideline (MAAQG) of 150 μg/m3. Subsequently, the other two industrial areas Tasek (TK) and Paka (PK) had no record of violating the MAAQG. The results for the SWR analysis had significant R2 values of 0.64, 0.66 and 0.60, respectively. The model performance results for variance inflation factor (VIF) were less than 5 and Durbin-Watson test (DW) had value of 2 for each of the study areas, which were significant. The comparative analysis between SWR and persistence model showed that the SWR had better capabilities, having lower errors for the BB, TK and PK areas. Using root mean square error (RMSE), the results showed error differences of 7, 12 and 16 %, and higher predictability using index of agreement (IA), having a difference of 17, 19 and 16 % for BB, TK, and PK areas, respectively. The results showed that SWR can be used in predicting PM10 next day average concentration, while the extreme event detection results showed that 100 μg/m3 were better detected than the 150 μg/m3 bench marked levels.
引用
收藏
相关论文
共 50 条
  • [21] Autoencoder-based deep belief regression network for air particulate matter concentration forecasting
    Xie, Jingjing
    Wang, Xiaoxue
    Liu, Yu
    Bai, Yun
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2018, 34 (06) : 3475 - 3486
  • [22] A Land Use Regression Application into Simulating Spatial Distribution Characteristics of Particulate Matter (PM2.5) Concentration in City of Xi'an, China
    Guo, Bin
    Wang, Xiaoxia
    Zhang, Donghai
    Pei, Lin
    Zhang, Dingming
    Wang, Xiaofeng
    POLISH JOURNAL OF ENVIRONMENTAL STUDIES, 2020, 29 (06): : 4065 - 4076
  • [23] Application of a Deep Learning Fusion Model in Fine Particulate Matter Concentration Prediction
    Li, Xizhe
    Zou, Nianyu
    Wang, Zhisheng
    ATMOSPHERE, 2023, 14 (05)
  • [24] Test and Analysis on Air Particulate Matter Concentration of a Subway Station in Chongqing
    Liu, Qing
    Yu, Xiaoping
    Shi, Guobing
    10TH INTERNATIONAL SYMPOSIUM ON HEATING, VENTILATION AND AIR CONDITIONING, ISHVAC2017, 2017, 205 : 856 - 862
  • [25] REGRESSION FUNCTION APPLICATION FOR PREDICTING FUTURE EXTRACTION OF BRICK MAKING MINERALS
    Kucerova, Lucie
    Luksova, Jana
    GEOCONFERENCE ON SCIENCE AND TECHNOLOGIES IN GEOLOGY, EXPLORATION AND MINING, SGEM 2013, VOL I, 2013, : 649 - 654
  • [26] Nonlinear analysis and prediction of coarse particulate matter concentration in ambient air
    Chelani, AB
    Devotta, S
    JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION, 2006, 56 (01) : 78 - 84
  • [27] Evaluation of random forest regression and multiple linear regression for predicting indoor fine particulate matter concentrations in a highly polluted city
    Yuchi, Weiran
    Gombojav, Enkhjargal
    Boldbaatar, Buyantushig
    Galsuren, Jargalsaikhan
    Enkhmaa, Sarangerel
    Beejin, Bolor
    Naidan, Gerel
    Ochir, Chimedsuren
    Legtseg, Bayarkhuu
    Byambaa, Tsogtbaatar
    Barn, Prabjit
    Henderson, Sarah B.
    Janes, Craig R.
    Lanphear, Bruce P.
    McCandless, Lawrence C.
    Takaro, Tim K.
    Venners, Scott A.
    Webster, Glenys M.
    Allen, Ryan W.
    ENVIRONMENTAL POLLUTION, 2019, 245 : 746 - 753
  • [28] A land use regression model for predicting ambient fine particulate matter across Los Angeles, CA
    Moore, D. K.
    Jerrett, M.
    Mack, W. J.
    Kunzli, N.
    JOURNAL OF ENVIRONMENTAL MONITORING, 2007, 9 (03): : 246 - 252
  • [29] Development and Application of Photoionization Technology for Organic Analysis of Particulate Matter
    Yuan, Mengna
    Cao, Junji
    AEROSOL SCIENCE AND ENGINEERING, 2022, 6 (02) : 127 - 134
  • [30] Development and Application of Photoionization Technology for Organic Analysis of Particulate Matter
    Mengna Yuan
    Junji Cao
    Aerosol Science and Engineering, 2022, 6 : 127 - 134