基于Catboost模型的广东省近地表NO2浓度估算[j]。

Q2 Environmental Science
Hong-Fei Zhang, Ning Du, Li Wang, Xian-Yun Zhang, De-Cai Gong, Long Li
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引用次数: 0

摘要

氮氧化物(NOx)是大气中重要的大气污染物,二氧化氮(NO2)是其主要成分之一。二氧化氮浓度的监测与评价对环境保护和公众健康具有重要意义。利用近实时二氧化氮浓度数据(NRTI NO2)、ERA5气象再分析数据和Sentinel-5P大气污染监测卫星DEM数据作为估算变量,基于Catboost模型估算广东省近地表NO2浓度。结果表明:①Catboost模型对近地表NO2浓度的预测精度最高,模型拟合的决定系数(R2)、均方根误差(RMSE)和平均绝对误差(MAE)分别达到0.91、4.89和3.45 μg·m-3,交叉验证的R2、RMSE和MAE分别达到0.90、4.91和3.43 μg·m-3,在月和季度尺度上具有较好的稳定性。②广东省近地表NO2月平均浓度呈u型变化趋势,1月最高为43.8 μg·m-3, 7月最低为14.37 μg·m-3。近地表NO2浓度的季节分布表现为“冬高夏低,春秋过渡性”,各季节NO2浓度的变化顺序为:冬季(27.53 μg·m-3);春季(20.77 μg·m-3) >;秋季(18.77 μg·m-3) >;夏季14.85 μg·m-3。③从空间分布上看,广东省近地表NO2值高的地区主要分布在经济快速发展和人口密集的地区,低值地区主要分布在以港口经济、农业和新能源为主的地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Estimation of Near-surface NO2 Concentration in Guangdong Province Based on Catboost Model].

Nitrogen oxide (NOx) is an important air pollutant in the atmosphere, and nitrogen dioxide (NO2) is one of its main components. The monitoring and estimation of NO2 concentration is very important for environmental protection and public health. The near-real-time nitrogen dioxide concentration data (NRTI NO2), ERA5 meteorological reanalysis data, and DEM data provided by Sentinel-5P atmospheric pollution monitoring satellite were used as estimation variables to estimate the near-surface NO2 concentration in Guangdong Province based on the Catboost model. The results showed that: ① The Catboost model estimated the near-surface NO2 concentration with the highest accuracy, with the coefficient of determination (R2), root mean square error (RMSE), and mean absolute error (MAE) of the model fit reaching 0.91, 4.89 μg·m-3, and 3.45 μg·m-3 and the cross-validated R2, RMSE, and MAE reaching 0.90, 4.91 μg·m-3, and 3.43 μg·m-3, with good stability on the monthly and quarterly scales. ② The monthly average NO2 concentration near the surface of Guangdong Province showed a U-shaped trend, with the highest value of 43.8 μg·m-3 in January and the lowest value of 14.37 μg·m-3 in July. The seasonal distribution of the near-surface NO2 concentration was characterized by "high during winter and low during summer and transitional during spring and autumn," and the NO2 concentration in each season was in the following order: winter (27.53 μg·m-3) > spring (20.77 μg·m-3) > autumn (18.77 μg·m-3) > summer (14.85 μg·m-3). ③ From a spatial distribution perspective, areas with high near-surface NO2 values in Guangdong Province were mainly located in rapidly developing and densely populated areas, while areas with low values were mainly distributed in areas focusing on port economy, agriculture, and new energy sources.

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来源期刊
环境科学
环境科学 Environmental Science-Environmental Science (all)
CiteScore
4.40
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0.00%
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15329
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