Comparison of Machine Learning Inversion Methods for Salinity in the Central Indian Ocean Based on SMOS Satellite Data

被引:0
|
作者
Gong, Ziyi [1 ]
He, Hongchang [1 ]
Fan, Donglin [1 ]
Zeng, You [1 ]
Liu, Zhenhao [1 ]
Pan, Bozhi [1 ]
机构
[1] Guilin Univ Technol, Coll Geomat & Geoinformat, Guilin 541006, Peoples R China
关键词
SEA-SURFACE SALINITY; MODEL;
D O I
10.1080/07038992.2023.2298575
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
In this paper, the central Indian Ocean (60 degrees-95 degrees E, 0 degrees-37 degrees S) has been selected as the research area, and Argo salinity data are used as the measured values. The Catboost algorithm is introduced for the first time to retrieve sea surface salinity, and a comparison is made with the traditional artificial neural network (ANN) and random forest (RF) machine learning algorithm. The results show that: (1) Through linear fitting with the Argo salinity, the R-2 of the three machine learning methods are 0.9299, 0.88 and 0.83, respectively. The corresponding RMSE were 0.2360, 0.3004, and 0.3156 psu, and MAE were 0.1816, 0.2486, and 0.2641 psu, respectively. (2) The spatial distribution of salinity of Argo and SMOS was compared with the inversion results of the model. It was found that the salinity of the sea area was lower at (83 degrees-88 degrees E, 24 degrees-27 degrees S) and (68 degrees-72 degrees E, 17 degrees-20 degrees S), and higher at 30 degrees-35 degrees south latitude, showing consistent with Argo. (3) The stability of the model was independently verified using the data from January to March 2020, and it was found that the R2 of the RF model shows the best stability, while the R-2 of the ANN model shows the worst stability.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] Spatial and temporal variability of central Indian Ocean salinity fronts observed by SMOS
    Nyadjro, Ebenezer S.
    Subrahmanyam, Bulusu
    REMOTE SENSING OF ENVIRONMENT, 2016, 180 : 146 - 153
  • [2] Validation of SMOS salinity data and its applications the to Indian Ocean climatic events
    Grunseich, Gary
    Bulusu, Subrahmanyam
    OCEANS 2011, 2011,
  • [3] BAYESIAN STATISTICAL MODELS OF SEA SURFACE SALINITY BASED ON SMOS SATELLITE DATA
    Zhao, Hong
    Li, Changjun
    Li, Hongping
    Han, Xiao
    2017 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS), 2017, : 3556 - 3559
  • [4] New sea surface salinity retrieval methods based on SMOS data
    Wang, Zhenzhan
    Tong, Xiaolin
    Lu, Hongli
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2014, 35 (11-12) : 4371 - 4382
  • [5] Deep learning to estimate ocean subsurface salinity structure in the Indian Ocean using satellite observations
    Jifeng QI
    Guimin SUN
    Bowen XIE
    Delei LI
    Baoshu YIN
    JournalofOceanologyandLimnology, 2024, 42 (02) : 377 - 389
  • [6] Deep learning to estimate ocean subsurface salinity structure in the Indian Ocean using satellite observations
    Qi, Jifeng
    Sun, Guimin
    Xie, Bowen
    Li, Delei
    Yin, Baoshu
    JOURNAL OF OCEANOLOGY AND LIMNOLOGY, 2024, 42 (02) : 377 - 389
  • [7] Deep learning to estimate ocean subsurface salinity structure in the Indian Ocean using satellite observations
    Jifeng Qi
    Guimin Sun
    Bowen Xie
    Delei Li
    Baoshu Yin
    Journal of Oceanology and Limnology, 2024, 42 : 377 - 389
  • [8] The Soil Moisture and Ocean Salinity (SMOS) space mission: regularized inversion of dual-polarimetric interferometric data
    Anterrieu, Eric
    Khazaal, Ali
    CHALLENGES IN REMOTE SENSING: PROCEEDINGS OF THE 3RD WSEAS INTERNATIONAL CONFERENCE ON REMOTE SENSING (REMOTE '07), 2007, : 111 - 115
  • [9] Estimation of soil salinity using satellite-based variables and machine learning methods
    Wang, Wanli
    Sun, Jinguang
    EARTH SCIENCE INFORMATICS, 2024, 17 (06) : 5049 - 5061
  • [10] A coordinated retrieval method for sea surface salinity based on SMOS and ocean color data
    Chen, Peng
    Wang, Tianyu
    Mao, Zhihua
    Bai, Yan
    Hao, Zengzhou
    REMOTE SENSING OF THE OCEAN, SEA ICE, COASTAL WATERS, AND LARGE WATER REGIONS 2016, 2016, 9999