张顺顺, 陆开来, 马润美, 刘欣, 班婕, 费鲜芸, 李湉湉. 基于机器学习算法的中国近地面臭氧浓度模拟[J]. 环境卫生学杂志, 2024, 14(2): 121-128. DOI: 10.13421/j.cnki.hjwsxzz.2024.02.004
    引用本文: 张顺顺, 陆开来, 马润美, 刘欣, 班婕, 费鲜芸, 李湉湉. 基于机器学习算法的中国近地面臭氧浓度模拟[J]. 环境卫生学杂志, 2024, 14(2): 121-128. DOI: 10.13421/j.cnki.hjwsxzz.2024.02.004
    ZHANG Shun-shun, LU Kai-lai, MA Run-mei, LIU Xin, BAN Jie, FEI Xian-yun, LI Tian-tian. Simulation of ground-level ozone concentration in China based on a machine learning algorithm[J]. Journal of Environmental Hygiene, 2024, 14(2): 121-128. DOI: 10.13421/j.cnki.hjwsxzz.2024.02.004
    Citation: ZHANG Shun-shun, LU Kai-lai, MA Run-mei, LIU Xin, BAN Jie, FEI Xian-yun, LI Tian-tian. Simulation of ground-level ozone concentration in China based on a machine learning algorithm[J]. Journal of Environmental Hygiene, 2024, 14(2): 121-128. DOI: 10.13421/j.cnki.hjwsxzz.2024.02.004

    基于机器学习算法的中国近地面臭氧浓度模拟

    Simulation of ground-level ozone concentration in China based on a machine learning algorithm

    • 摘要:
      目的  探索基于多种机器学习模型的我国近地面臭氧浓度高精度模拟方法。
      方法  基于2013—2017年的多源数据,建立基于多种机器学习算法的全国近地面臭氧浓度模拟模型。
      结果  随机森林(random forest, RF)模型的性能最佳,R2为0.752,RMSE和MAE分别为23.264和16.094 μg/m3。地面下沉短波辐射为近地面臭氧浓度模拟的最关键因素。
      结论  基于气象、地理、排放等多元变量的RF模型可实现近地面臭氧高精度模拟。未来可进一步引入空气污染物的自然源排放量数据以提高模型精度。

       

      Abstract:
      Objective  To explore a high-precision simulation method for ground-level ozone concentration in China based on multiple machine learning models.
      Methods  Based on multi-source data from 2013 to 2017, a national ground-level ozone concentration simulation model was established using multiple machine learning algorithms.
      Results  The random forest (RF) model had the best performance with an R2 of 0.752, and RMSE and MAE of 23.264 μg/m3 and 16.094 μg/m3, respectively. The surface downwelling shortwave radiation was the most critical factor for ground-level ozone concentration simulation.
      Conclusion  The RF model based on multivariate variables such as meteorology, geography, and emission can realize high-precision simulation of ground-level ozone. In the future, the natural source emission data of air pollutants can be further introduced to improve the accuracy of the model.

       

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