Triple Collocation of Ground-, Satellite- and Land Surface Model-Based Surface Soil Moisture Products in Oklahoma Part II: New Multi-Sensor Soil Moisture (MSSM) Product

Remote. Sens. Pub Date : 2023-07-07 DOI:10.3390/rs15133450
Z. Hong, H. Moreno, L. Alvarez, Zhi Li, Yang Hong
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Abstract

This study develops a triple-collocation (TC) based, multi-source shallow-soil moisture product for Oklahoma. The method uses a least squared weights (LSW) optimization to find the set of parameters that result in the lowest root mean squared error (RMSE) with respect to the “unknown truth”. Soil moisture information from multiple sources and resolutions, including the Soil Moisture Active Passive SMAP L3_SM_P_E (9 km, daily), the physically-based, land surface model (LSM) estimates from NLDAS_NOAH0125_H (1/8°, hourly), and the Oklahoma Mesonet ground sensor network (9 km interpolated from point, 30 min) is merged into a 9 km spatial and daily temporal resolution product across the state of Oklahoma from April 2015 to July 2019. This multi-sensor surface soil moisture (MSSM) product is assessed in terms of a state-wide benchmark and previously tested, in situ-based soil moisture product and SMAP L4. Results show that: (1) independent source products have differential values according to the regional conditions they represent, including land cover type, soils, irrigation, or climate regime; (2) beyond serving as validation sets, in situ measurements are of significant value for improving the accuracy of multi-sensor soil moisture datasets through TC; and (3) state-wide RMSE values obtained with MSSM are similar to the typical measurement error found on in situ ground measurements which provides some degree of confidence on the new product. MSSM is an improvement over currently available products in Oklahoma due to its minimized uncertainty, easiness of production, and continuous temporal and geographic coverage. Nevertheless, to exploit its utility, further tests of this methodology are needed in different climates, land cover types, geographic regions, and for other independent products and spatiotemporal resolutions.
基于地面、卫星和地表模型的俄克拉荷马州地表土壤水分产品的三重配置第二部分:新的多传感器土壤水分(MSSM)产品
本研究为俄克拉何马州开发了一个基于三重配置(TC)的多源浅层土壤水分产品。该方法使用最小二乘权重(LSW)优化来找到相对于“未知真相”产生最低均方根误差(RMSE)的参数集。来自多个来源和分辨率的土壤湿度信息,包括土壤湿度主被动SMAP L3_SM_P_E (9 km,每日),NLDAS_NOAH0125_H(1/8°,每小时)的基于物理的陆地表面模型(LSM)估计值,以及俄克拉荷马州Mesonet地面传感器网络(从点插值9 km, 30分钟),合并为2015年4月至2019年7月横跨俄克拉荷马州的9 km空间和每日时间分辨率产品。这种多传感器表面土壤湿度(MSSM)产品是根据全州基准进行评估的,并在基于情境的土壤湿度产品和SMAP L4中进行了先前的测试。结果表明:(1)独立源产品根据其所代表的区域条件(包括土地覆盖类型、土壤、灌溉或气候状况)具有不同的值;(2)除了作为验证集外,原位测量对通过TC提高多传感器土壤湿度数据集的精度具有重要价值;(3)用MSSM获得的全州RMSE值与在现场地面测量中发现的典型测量误差相似,这为新产品提供了一定程度的可信度。MSSM是俄克拉荷马州现有产品的改进,因为它的不确定性最小,易于生产,并且具有连续的时间和地理覆盖范围。然而,为了发挥其效用,需要在不同气候、土地覆盖类型、地理区域以及其他独立产品和时空分辨率下对该方法进行进一步测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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