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Estimating fractional snow cover from passive microwave brightness temperature data using MODIS snow cover product over North America

机译:使用Modis雪盖产品在北美估算来自被动微波亮度温度数据的分数雪覆盖

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The dynamic characteristics of seasonal snow cover are critical for hydrology management, the climate system, and the ecosystem functions. Optical satellite remote sensing has proven to be an effective tool for monitoring global and regional variations in snow cover. However, accurately capturing the characteristics of snow dynamics at a finer spatiotemporal resolution continues to be problematic as observations from optical satellite sensors are greatly impacted by clouds and solar illumination. Traditional methods of mapping snow cover from passive microwave data only provide binary information at a spatial resolution of 25? km . This innovative study applies the random forest regression technique to enhanced-resolution passive microwave brightness temperature data (6.25? km ) to estimate fractional snow cover over North America in winter months (January and February). Many influential factors, including land cover, topography, and location information, were incorporated into the retrieval models. Moderate Resolution Imaging Spectroradiometer (MODIS) snow cover products between 2008 and 2017 were used to create the reference fractional snow cover data as the “true” observations in this study. Although overestimating and underestimating around two extreme values of fractional snow cover, the proposed retrieval algorithm outperformed the other three approaches (linear regression, artificial neural networks, and multivariate adaptive regression splines) using independent test data for all land cover classes with higher accuracy and no out-of-range estimated values. The method enabled the evaluation of the estimated fractional snow cover using independent datasets, in which the root mean square error of evaluation results ranged from 0.189 to 0.221. The snow cover detection capability of the proposed algorithm was validated using meteorological station observations with more than 310?000?records. We found that binary snow cover obtained from the estimated fractional snow cover was in good agreement with ground measurements (kappa: 0.67). There was significant improvement in the accuracy of snow cover identification using our algorithm; the overall accuracy increased by 18?% (from 0.71 to 0.84), and the omission error was reduced by 71?% (from 0.48 to 0.14) when the threshold of fractional snow cover was 0.3. The experimental results show that passive microwave brightness temperature data may potentially be used to estimate fractional snow cover directly in that this retrieval strategy offers a competitive advantage in snow cover detection.
机译:季节性雪覆盖的动态特性对于水文管理,气候系统和生态系统功能至关重要。光学卫星遥感已被证明是监控雪覆盖的全球和区域变化的有效工具。然而,随着光学卫星传感器的观察极大地受到云和太阳能照明的影响,准确地捕获较细时空分辨率的雪动力学的特征仍然存在问题。从被动微波数据映射雪盖的传统方法仅以25的空间分辨率提供二进制信息? km。这项创新研究将随机森林回归技术应用于增强分辨率的被动微波亮度温度数据(6.25 km),以在冬季(1月和2月)在北美估算北美的分数雪覆盖。许多影响因素,包括陆地覆盖,地形和位置信息,并入到检索模型中。 2008年和2017年间的适度分辨率成像分光镜(MODIS)雪覆盖产品用于创建参考分数雪覆盖数据作为本研究中的“真实”观察。虽然围绕分数雪覆盖的两个极端值估计和低估,但是所提出的检索算法优于其他三种方法(线性回归,人工神经网络和多变量自适应回归样条),使用所有陆地覆盖类的独立测试数据具有更高的精度和不超出范围的估计值。该方法使得使用独立数据集来评估估计的分数雪覆盖,其中评估结果的根均方误差为0.189至0.221。使用超过310 000的气象站观测验证了所提出的算法的雪覆盖检测能力。记录。我们发现从估计的分数雪覆盖获得的二元雪盖与地面测量有关(κ:0.67)。使用我们的算法,积雪识别的准确性显着改善;当分数雪盖的阈值为0.3时,整体精度增加18?%(从0.71到0.84),省略误差减少了71?%(从0.48到0.14)。实验结果表明,被动微波亮度温度数据可能主要用于直接估计分数雪盖,因为该检索策略在雪覆盖检测中提供竞争优势。

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