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The data fusion of aerosol optical thickness using universal kriging and stepwise regression in East China

机译:华东地区通用克里金法和逐步回归的气溶胶光学厚度数据融合

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Recently, aerosol optical depth (AOD) study has become more important in the field of atmosphere sciences. AOD datasets retrieved from satellites are widely used in multiple fields because of their wide coverage and low cost. However, the integrity of AOD spatial coverage can be easily influenced by clouds, rain, haze and other weather phenomena. Fortunately, the full coverage AOD images are producible by employing the data fusion algorithm and ancillary methods. Based on AOD data derived from MODIS and OMI with meteorological parameters on November 18,2013 over the East China, this study combined the universal kriging with stepwise regression and second-order polynomial fitted to extend the coverage of MODIS AOD at 550 nm. Results showed that stepwise regression method is efficient to infer the MODIS AOD by using the OMI AOD and meteorological parameters. The wind speed, relative humidity, pressure and solar radiation have significant impacts on the spatial and temporal distributions of AOD. The mean prediction error of universal kriging prediction model is 0.0047 in this paper, indicating that the universal kriging is an effective and accurate interpolation method for AOD data fusion. The methods employed in this paper can provide the data source of AOD for studies in climate and other related fields, effectively compensating the non-full coverage shortcoming of satellite AOD datasets.
机译:最近,气溶胶光学深度(AOD)研究在大气科学领域变得越来越重要。从卫星获取的AOD数据集覆盖面广,成本低,因此在多个领域得到了广泛的应用。但是,AOD空间覆盖的完整性很容易受到云,雨,霾和其他天气现象的影响。幸运的是,可以通过采用数据融合算法和辅助方法来制作全覆盖的AOD图像。基于2013年11月18日在华东地区从MODIS和OMI提取的具有气象参数的AOD数据,该研究结合了通用克里金法与逐步回归和二阶多项式拟合,以扩展了MODIS AOD在550 nm的覆盖范围。结果表明,采用OMI AOD和气象参数,逐步回归方法可以有效地推断MODIS AOD。风速,相对湿度,压力和太阳辐射对AOD的时空分布有重要影响。通用克里格预测模型的平均预测误差为0.0047,表明通用克里格是一种有效而精确的AOD数据融合插值方法。本文所采用的方法可以为气候和其他相关领域的研究提供AOD的数据源,有效地弥补了卫星AOD数据集的非全覆盖缺点。

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