JpGU-AGU Joint Meeting 2017

講演情報

[EE] ポスター発表

セッション記号 A (大気水圏科学) » A-CG 大気水圏科学複合領域・一般

[A-CG46] [EE] 衛星による地球環境観測

2017年5月20日(土) 10:45 〜 12:15 ポスター会場 (国際展示場 7ホール)

コンビーナ:沖 理子(宇宙航空研究開発機構)、Allen A Huang(University of Wisconsin Madison)、Gail Skofronick Jackson(NASA Goddard Space Flight Center)、本多 嘉明(千葉大学環境リモートセンシング研究センター)、Paul Chang(NOAA College Park)

[ACG46-P29] Uncertainty Estimation of Soil Moisture Datasets Using Triple Collocation Methods at Mongolian Grassland

鈴木 康平2、*浅沼 順1開發 一郎3 (1.筑波大学アイソトープ環境動態研究センター、2.筑波大学大学院生命環境科学研究科地球科学専攻、3.広島大学大学院総合科学研究科)

キーワード:Soil Moisture, Satelite Remote Sensing, AMSR-E, Satellite products validation

Uncertainties in soil moisture (SM) datasets were estimated at semi-arid grassland in Mongolia by applying the triple collocation methods (TC). Three SM datasets applied to TC are a SM product of AMSR-E, GLDAS with Noah, and the in-situ measurements.
First, in order to demonstrate capability of TC, the uncertainties acquired through TC and a statistical measure are compared. The results showed that the TC uncertainties of AMSR-E are found to be smaller than the root mean squared difference (RMSD) between AMSR-E and the in-situ measurements. This indicates that the latter includes the systematic errors as well as the random errors of AMSR-E and the in-situ, while the TC uncertainties only identifies the random error of AMSR-E. Therefore, it was shown that TC is capable of providing an absolute measure of uncertainties in a SM dataset, unlike other statistical measures such as RMSD.
Further analyses showed that differences of the vegetation amounts expressed in NDVI and difference between ascending/descending observations of AMSR-E do not cause significant difference in the magnitude of uncertainties. This suggests that these factors did not influence uncertainties of AMSR-E.
It is also discovered that, in a few cases, TC cannot calculate uncertainties, which may be attributed to a violation of some of the TC assumptions. This is consistent with previous claims that TC is vulnerable to violations of the assumptions. The current findings suggest that the proper selections and pre-processing of the datasets are of significance.