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Statistical Analysis and Predictive Modelling of Air Pollutants Using Advanced Machine Learning Approaches

机译:采用先进机器学习方法的空气污染物统计分析及预测建模

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Air quality forecasting is important as it provides early warning of air pollutants, which could be harmful to human health and the environment. This study presents a statistical analysis and prediction of various air pollutants (such as PM10, CO, SO2, NO2 and O3) and the air pollution index (API) in Labuan, Malaysia using advanced machine learning approaches. The exponential triple smoothing (ETS) and seasonal autoregressive integrated moving average (SARIMA) forecasting methods were used in the study. Air pollutants and API data from 2000 to 2018 were analyzed and tested with these forecasting models. The ETS model with 68% confidence interval (CI) fitted well for all air pollutants except SO2, which was best fitted by the 95% CI model. The SARIMA (1, 1, 1)(0, 1, 1)12 model was found to be the most appropriate for forecasting different air pollutants and API in Labuan. The ETS model was more suitable for forecasting CO and SO2 and the SARIMA (1, 1, 1)(0, 1, 1)12 model was more suitable for forecasting PMio, NO2, O3 and API. The ETS model predicts that the annual concentrations of CO and SO2 in 2030 would be about 0 ± 0.81 ppm and 0 ± 0.002 ppm, respectively, at 68% CI. The SARIMA (1, 1, 1)(0, 1, 1)i2 model predicts that the annual concentrations of PMio, NO2 and O3 in 2030 would be about 38.7 ± 14.8 pg/m3, 0 ± 0.006 ppm and 0.01 ± 0.008 ppm, respectively, and API value of about 44 ± 15 in Labuan.
机译:空气质量预测很重要,因为它提供了空气污染物的预警,这可能对人类健康和环境有害。本研究提出了各种空气污染物的统计分析和预测(例如PM 10 ,co,所以 2 , 不 2 和o. 3 )和马来西亚Labuan的空气污染指数(API)使用先进的机器学习方法。研究中使用了指数三重平滑(ETS)和季节性自回归综合移动平均线(Sarima)预测方法。分析了2000年至2018年的空气污染物和API数据,并用这些预测模型进行了测试。具有68%置信区间(CI)的ETS模型适用于所有空气污染物,除了如此 2 ,最能由95%CI模型安装。发现Sarima(1,1,1)(0,1,1)12模型是最适合于预测Labuan的不同空气污染物和API。 ETS模型更适合预测CO等 2 和Sarima(1,1,1)(0,1,1)12模型更适合预测PMIO,没有 2 ,O. 3 和api。 ETS模型预测了CO等的年度浓度 2 在2030年,分别为0±0.81ppm和0±0.002ppm,在68%CI。 Sarima(1,1,1)(0,1,1)i 2 模型预测,年度浓度的PMIO,没有 2 和o. 3 2030年将是约38.7±14.8 pg / m 3 ,0±0.006 ppm和0.01±0.008ppm,分别为Labuan约44±15的API值。

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