Choi Hyunyoung, Park Seonyoung, Kang Yoojin, Im Jungho, Song Sanghyeon
Department of Urban Environment Engineering, Ulsan National Institute of Science and Technology, Ulsan, 44919, Republic of Korea.
Department of Applied Artificial Intelligence, Seoul National University of Science and Technology, Seoul, 01811, Republic of Korea.
Environ Pollut. 2023 Apr 15;323:121169. doi: 10.1016/j.envpol.2023.121169. Epub 2023 Feb 9.
To produce real-time ground-level information on particulate matter with a diameter equal to or less than 2.5 μm (PM), many studies have explored the applicability of satellite data, particularly aerosol optical depth (AOD). However, many of the techniques used are computationally demanding; to overcome these challenges, machine learning(ML)-based research has been on the rise. Here, we used ML techniques to directly estimate ground-level PM concentrations over South Korea using top-of-atmosphere (TOA) reflectance from the Geostationary Ocean Color Imager I (GOCI-I) and its next generation GOCI-II with improved spatial, spectral, and temporal resolutions. Three ML techniques were used to estimate ground-level PM concentrations: random forest, light gradient boosting machine (LGBM), and artificial neural network. Three schemes were examined based on the input feature composition of the GOCI spectral bands: scheme 1 using all GOCI-I bands, scheme 2 using only GOCI-II bands that overlap with GOCI-I bands, and scheme 3 using all GOCI-II bands. The results showed that LGBM performed better than the other ML models. GOCI-II-based schemes 2 and 3 (determination of coefficient (R) = 0.85 and 0.85 and root-mean-square-error (RMSE) = 7.69 and 7.82 μg/m, respectively) performed slightly better than GOCI-I-based scheme 1 (R = 0.83 and RMSE = 8.49 μg/m). In particular, TOA reflectance at a new channel (380 nm) of GOCI-II was identified as the most contributing variable, given its high sensitivity to aerosols. The long-term estimation of PM concentrations using the proposed models was examined for ground stations located in two major cities. GOCI-II-based models produced a more detailed spatial distribution of PM concentrations owing to their higher spatial resolution (i.e., 250 m). The use of TOA reflectance data, instead of AOD and other aerosol products commonly used in previous studies, reduced the missing rate of the estimated ground-level PM concentrations by up to 50%. Our results indicate that the proposed approach using TOA reflectance data from geostationary satellite sensors has great potential for estimating ground-level PM concentrations for operational purposes.
为了生成直径小于或等于2.5微米的颗粒物(PM)的实时地面信息,许多研究探讨了卫星数据的适用性,特别是气溶胶光学厚度(AOD)。然而,所使用的许多技术对计算要求很高;为了克服这些挑战,基于机器学习(ML)的研究不断增加。在此,我们使用ML技术,利用地球静止海洋彩色成像仪I(GOCI-I)及其具有更高空间、光谱和时间分辨率的下一代GOCI-II的大气层顶(TOA)反射率,直接估算韩国地面PM浓度。使用了三种ML技术来估算地面PM浓度:随机森林、轻梯度提升机(LGBM)和人工神经网络。基于GOCI光谱波段的输入特征组成,研究了三种方案:方案1使用所有GOCI-I波段,方案2仅使用与GOCI-I波段重叠的GOCI-II波段,方案3使用所有GOCI-II波段。结果表明,LGBM的性能优于其他ML模型。基于GOCI-II的方案2和方案3(决定系数(R)分别为0.85和0.85,均方根误差(RMSE)分别为7.69和7.82微克/立方米)的性能略优于基于GOCI-I的方案1(R = 0.83,RMSE = 8.49微克/立方米)。特别是,GOCI-II新通道(380纳米)处的TOA反射率因其对气溶胶的高灵敏度而被确定为最具贡献的变量。针对位于两个主要城市的地面站,研究了使用所提出模型对PM浓度的长期估算。基于GOCI-II的模型由于其更高的空间分辨率(即250米),产生了更详细的PM浓度空间分布。使用TOA反射率数据,而不是先前研究中常用的AOD和其他气溶胶产品,将估算的地面PM浓度的缺失率降低了多达50%。我们的结果表明,所提出的使用地球静止卫星传感器的TOA反射率数据的方法在估算用于业务目的的地面PM浓度方面具有巨大潜力。