Litcius/Paper detail

Coupling of quantile regression into boosted regression trees (BRT) technique in forecasting emission model of PM10 concentration

Wan Nur Shaziayani, Ahmad Zia Ul–Saufie, Hasfazilah Ahmat, Dhiya Al‐Jumeily

2021Air Quality Atmosphere & Health25 citationsDOIOpen Access PDF

Abstract

Abstract Air pollution is currently becoming a significant global environmental issue. The sources of air pollution in Malaysia are mobile or stationary. Motor vehicles are one of the mobile sources. Stationary sources originated from emissions caused by urban development, quarrying and power plants and petrochemical. The most noticeable contaminant in the Peninsular of Malaysia is the particulate matter (PM 10 ), the highest contributor of Air Pollution Index (API) compared to other pollution parameters. The aim of this study is to determine the best loss function between quantile regression (QR) and ordinary least squares (OLS) using boosted regression tree (BRT) for the prediction of PM 10 concentration in Alor Setar, Klang and Kota Bharu, Malaysia. Model comparison statistics using coefficient of determination (R 2 ), prediction accuracy (PA), index of agreement (IA), normalized absolute error (NAE) and root mean square error (RMSE) show that QR is slightly better than OLS with the performance of R 2 (0.60–0.73), PA (0.78–0.85), IA (0.86–0.92), NAE (0.15–0.17) and RMSE (9.52–22.15) for next-day predictions in BRT model.

Topics & Concepts

Ordinary least squaresStatisticsMean squared errorAir pollutionQuantileMathematicsQuantile regressionCoefficient of determinationPollutionEnvironmental scienceRegression analysisLinear regressionRegressionIndex (typography)EconometricsComputer scienceChemistryBiologyOrganic chemistryWorld Wide WebEcologyAir Quality Monitoring and ForecastingAir Quality and Health ImpactsVehicle emissions and performance
Coupling of quantile regression into boosted regression trees (BRT) technique in forecasting emission model of PM10 concentration | Litcius