PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION

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date 2018-01-13 20:02:42
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id 13137
institution UniSZA
originalfilename 7445-01-FH02-FBIM-18-12701.pdf
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spelling 13137 https://intelek.unisza.edu.my/intelek/pages/view.php?ref=13137 https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072 Restricted Document Article Journal application/pdf 22 Adobe Acrobat Pro DC 20 Paper Capture Plug-in 1.7 2018-01-13 20:02:42 7445-01-FH02-FBIM-18-12701.pdf UniSZA Private Access PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION Journal of Fundamental and Applied Sciences PM 10 is one of the major concerns that have high potential for harmful effects on human health. Thus, prediction of PM 10 was performed with the objectives to model suitable PM 10 prediction formula to predict the concentration of PM 10 . Imputation methods of EMB-algorithm and nearest neighbor were applied to treat missing data before analyzed by Fit model, MLR and ANN. R 2 obtained for Fit-model, MLR and ANN using imputation method of EMB-algorithm and nearest neighbor are (0.9975, 0.3858), (0.9623, 0.3857) and (0.9975, 0.4025) respectively. Sensitivity analysis (SA) shows humidity, temperature, CO, UVB and O 3 out of fifteen parameters contribute the most to the present of PM 10 concentration. In conclusion, formula for the best PM 10 prediction can be modeled by using ANN or Fit model together with the imputation method of EMB-algorithm. 10 1S 182-203
spellingShingle PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION
summary PM 10 is one of the major concerns that have high potential for harmful effects on human health. Thus, prediction of PM 10 was performed with the objectives to model suitable PM 10 prediction formula to predict the concentration of PM 10 . Imputation methods of EMB-algorithm and nearest neighbor were applied to treat missing data before analyzed by Fit model, MLR and ANN. R 2 obtained for Fit-model, MLR and ANN using imputation method of EMB-algorithm and nearest neighbor are (0.9975, 0.3858), (0.9623, 0.3857) and (0.9975, 0.4025) respectively. Sensitivity analysis (SA) shows humidity, temperature, CO, UVB and O 3 out of fifteen parameters contribute the most to the present of PM 10 concentration. In conclusion, formula for the best PM 10 prediction can be modeled by using ANN or Fit model together with the imputation method of EMB-algorithm.
title PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION
title_full PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION
title_fullStr PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION
title_full_unstemmed PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION
title_short PREDICTION MODEL OF MISSING DATA: A CASE STUDY OF PM10 ACROSS MALAYSIA REGION
title_sort prediction model of missing data: a case study of pm10 across malaysia region