• Journal of Atmospheric and Environmental Optics
  • Vol. 16, Issue 4, 320 (2021)
Yan TANG*, Rui XU, and Fanyue MENG
Author Affiliations
  • [in Chinese]
  • show less
    DOI: 10.3969/j.issn.1673-6141.2021.04.004 Cite this Article
    TANG Yan, XU Rui, MENG Fanyue. Spatiotemporal Evolution and Prediction of AOD in Typical Urban Agglomerations in Eastern China[J]. Journal of Atmospheric and Environmental Optics, 2021, 16(4): 320 Copy Citation Text show less
    References

    [1] Shi Guangyu, Wang Biao, Zhang Hua, et al. The radiative and climatic effects of atmospheric aerosols[J]. Chinese Journal of Atmospheric Sciences, 2008, 32(4): 826-840.

    [2] Wang Yinpai, Yu Xin, Xie Guangqi. Spatial distribution and temporal variation of aerosol optical depth over China in the past 15 years[J]. China Environmental Science, 2018, 38(2): 426-434.

    [3] Liu Zhuang, Shi Chenlie, Zhang Meng, et al. Temporal characteristics of aerosol optical depth based on cluster analysis method[J]. Journal of Atmospheric and Environmental Optics, 2019, 14(6): 411-418.

    [4] Gao Ling, Li Jun, Chen Lin, et al. Retrieval atmospheric aerosol optical depth over China from AVHRR by multiple regression method[J]. Journal of Atmospheric and Environmental Optics, 2015, 10(4): 286-294.

    [5] Albayrak A, Wei J, Petrenko M , et al. Global bias adjustment for MODIS aerosol optical thickness using neural network[J]. Journal of Applied Remote Sensing, 2013, 7(1): 073514.

    [6] Nabavi S O, Haimberger L, Abbasi R, et al. Prediction of aerosol optical depth in West Asia using deterministic models and machine learning algorithms[J]. Aeolian Research, 2018, 35(12): 69-84.

    [7] Das D, Radosavljevic V, Vucetic S, et al. Reducing need for collocated ground and satellite based observations in statistical aerosol optical depth estimation[C]. IEEE International Geoscience and Remote Sensing Symposium, Boston: IEEE, 2008.

    [8] Falamarzi Y, Palizdan N, Huang Y, et al. Estimating evapotranspiration from temperature and wind speed data using artificial and wavelet neural networks (WNNs)[J]. Agricultural Water Management, 2014, 140(7): 26-36.

    [9] Samadianfard S, Asadi E, Jarhan S, et al. Wavelet neural networks and gene expression programming models to predict short-term soil temperature at different depths[J]. Soil and Tillage Research, 2018, 175(1): 37-50.

    [10] Nourani V, Kisi O, Komasi M. Two hybrid artificial intelligence approaches for modeling rainfal-runoff process[J]. Journal of Hydrology, 2011, 402(1): 41-59.

    [11] Zhang Chenhe, Zhao Tianliang, Wang Fu, et al. Variationsin aerosol optical depth over three northeastern provinces of China in 2003-2014[J]. Environmental Science, 2017, 38(2): 476-484.

    [12] Zhu Yuhong, Zhang Zili, Tian Ping, et al. Satellite-based long-term trends analysis in aerosol optical properties over the plain areas of north Zhejiang Province[J]. Acta Scientiae Circumstantiae, 2015, 35(2): 352-362.

    [13] Dong Zipeng, Yu Xing, Li Xingmin, et al. Analysis of aerosol optical thickness variation and its causes in Shaanxi Province based on MODIS data[J]. Chinese Science Bulletin, 2014, 59(3): 306-316.

    [14] Zhang Q, Benveniste A. Wavelet networks[J]. IEEE Transactions on Neural Networks, 1992, 3(6): 889-898.

    [15] Kang N, Raghavendra K, Hu K, et al. Long-term (2002-2014) evolution and trend in Collection 5.1 Level-2 aerosol products derived from the MODIS and MISR sensors over the Chinese Yangtze River Delta[J]. Atmospheric Research, 2016, 181(11): 29-43.

    [16] Sun Qiang, Fan Xuehua, Xia Xiang′ao. Observation and analysis of aerosol vertical distribution characteristics in North China Plain[J]. Meteorological and Environmental Sciences, 2016, 39(1): 26-33.

    [17] He Q S, Li C C, Geng F H, et al. Study on long-term aerosol distribution over the land of east China using MODIS data[J]. Aerosol and Air Quality Research, 2012, 12(3): 304-319.

    [18] Xiao H W, Xiao H Y, Luo L, et al. Stable carbon and nitrogen isotope compositions of bulk aerosol samples over the South China Sea[J]. Atmospheric Environment, 2018, 193(11): 1-10.

    [19] Guangdong Provincial Bureau of Statistics. Guangdong statistical yearbook[OL].\[2019-09-29]. http://stats.gd.gov.cn/.

    TANG Yan, XU Rui, MENG Fanyue. Spatiotemporal Evolution and Prediction of AOD in Typical Urban Agglomerations in Eastern China[J]. Journal of Atmospheric and Environmental Optics, 2021, 16(4): 320
    Download Citation