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Analysis of Daytime and Nighttime Ground Level Ozone Concentrations Using Boosted Regression Tree Technique

机译:利用增强回归树技术分析白天和晚上的地面臭氧浓度

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This paper investigated the use of boosted regression trees (BRTs) to draw an inference about daytime and nighttime ozone formation in a coastal environment. Hourly ground-level ozone data for a full calendar year in 2010 were obtained from the Kemaman (CA 002) air quality monitoring station. A BRT model was developed using hourly ozone data as a response variable and nitric oxide (NO), Nitrogen Dioxide (NO2) and Nitrogen Dioxide (NOx) and meteorological parameters as explanatory variables. The ozone BRT algorithm model was constructed from multiple regression models, and the 'best iteration' of BRT model was performed by optimizing prediction performance. Sensitivity testing of the BRT model was conducted to determine the best parameters and good explanatory variables. Using the number of trees between 2,500-3,500, learning rate of 0.01, and interaction depth of 5 were found to be the best setting for developing the ozone boosting model. The performance of the O3 boosting models were assessed, and the fraction of predictions within two factor (FAC2), coefficient of determination (R2) and the index of agreement (IOA) of the model developed for day and nighttime are 0.93, 0.69 and 0.73 for daytime and 0.79, 0.55 and 0.69 for nighttime respectively. Results showed that the model developed was within the acceptable range and could be used to understand ozone formation and identify potential sources of ozone for estimating O3 concentrations during daytime and nighttime. Results indicated that the wind speed, wind direction, relative humidity, and temperature were the most dominant variables in terms of influencing ozone formation. Finally, empirical evidence of the production of a high ozone level by wind blowing from coastal areas towards the interior region, especially from industrial areas, was obtained.
机译:本文研究了使用增强回归树(BRT)得出关于沿海环境中白天和晚上臭氧形成的推断。从凯玛曼(CA 002)空气质量监测站获得2010年全年的每小时臭氧水平小时数据。使用每小时的臭氧数据作为响应变量,以一氧化氮(NO),二氧化氮(NO2)和二氧化氮(NOx)和气象参数作为解释变量,开发了BRT模型。由多个回归模型构建了臭氧BRT算法模型,并通过优化预测性能进行了BRT模型的“最佳迭代”。进行了BRT模型的敏感性测试,以确定最佳参数和良好的解释变量。使用2,500-3,500之间的树木数量,学习率0.01和交互深度5被发现是开发臭氧增强模型的最佳设置。评估了O3强化模型的性能,白天和夜间开发的模型在两个因子内的预测分数(FAC2),确定系数(R2)和一致性指数(IOA)为0.93、0.69和0.73白天分别为0.79、0.55和0.69。结果表明,开发的模型在可接受的范围内,可用于了解臭氧的形成并确定臭氧的潜在来源,以估算白天和晚上的O3浓度。结果表明,就影响臭氧形成而言,风速,风向,相对湿度和温度是最主要的变量。最后,获得了从沿海地区向内陆地区,特别是工业地区吹来的高臭氧水平产生的经验证据。

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