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Generating seamless global daily AMSR2 soil moisture (SGD-SM) long-term products for the years 2013–2019

机译:在2013-2019年生成无缝全球每日AMSR2土壤水分(SGD-SM)长期产品

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High-quality and long-term soil moisture products are significant for hydrologic monitoring and agricultural management. However, the acquired daily Advanced Microwave Scanning Radiometer 2 (AMSR2) soil moisture products are incomplete in global land (just about 30?%–80?% coverage ratio), due to the satellite orbit coverage and the limitations of soil moisture retrieval algorithms. To solve this inevitable problem, we develop a novel spatio-temporal partial convolutional neural network (CNN) for AMSR2 soil moisture product gap-filling. Through the proposed framework, we generate the seamless daily global (SGD) AMSR2 long-term soil moisture products from 2013 to 2019. To further validate the effectiveness of these products, three verification methods are used as follows: (1)?in situ validation, (2)?time-series validation, and (3)?simulated missing-region validation. Results show that the seamless global daily soil moisture products have reliable cooperativity with the selected in situ values. The evaluation indexes of the reconstructed (original) dataset are a correlation coefficient ( R ) of 0.685 (0.689), root-mean-squared error (RMSE) of 0.097 (0.093), and mean absolute error (MAE) of 0.079 (0.077). The temporal consistency of the reconstructed daily soil moisture products is ensured with the original time-series distribution of valid values. The spatial continuity of the reconstructed regions is in accordance with the spatial information ( R : 0.963–0.974, RMSE: 0.065–0.073, and MAE: 0.044–0.052). This dataset can be downloaded at https://doi.org/10.5281/zenodo.4417458 (Zhang et al., 2021).
机译:高品质和长期的土壤水分产品对于水文监测和农业管理是重要的。然而,由于卫星轨道覆盖率和土壤湿度检索算法的局限性,所获得的每日高级微波扫描辐射计2(AMSR2)土壤水分产品在全球土地上不完全(仅约30?% - 80?%覆盖率)。为了解决这个不可避免的问题,我们开发了一种新型的时空部分卷积神经网络(CNN),用于AMSR2土壤水分产品间隙填充。通过拟议的框架,我们从2013年到2019年生成了无缝的日常全球(SGD)AMSR2长期土壤水分产品。为了进一步验证这些产品的有效性,三种验证方法如下:(1)?原位验证,(2)?时间序列验证,(3)?模拟缺失区域验证。结果表明,无缝的全球日落水分产品具有可靠的合作与选定的原位值合作。重建(原始)数据集的评估指标是0.685(0.689)的相关系数(R),根平均误差(RMSE)为0.097(0.093),平均误差(MAE)为0.079(0.077) 。通过原始时间序列分布的有效值分布,确保了重建的日常土壤水分产品的时间一致性。重建区域的空间连续性符合空间信息(R:0.963-0.974,RMSE:0.065-0.073和MAE:0.044-0.052)。可以在https://doi.org/10.5281/zenodo.4417458(Zhang等,2021)下载此数据集。

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