Estimation of Soil Moisture Using Multi-Source Remote Sensing and Machine Learning Algorithms in Farming Land of Northern China

被引:7
作者
Liu, Quanshan [1 ]
Wu, Zongjun [1 ]
Cui, Ningbo [1 ]
Jin, Xiuliang [2 ]
Zhu, Shidan [1 ]
Jiang, Shouzheng [1 ]
Zhao, Lu [1 ]
Gong, Daozhi [3 ]
机构
[1] Sichuan Univ, Coll Water Resource & Hydropower, State Key Lab Hydraul & Mt River Engn, Chengdu 610065, Peoples R China
[2] Chinese Acad Agr Sci, Key Lab Crop Physiol & Ecol, Minist Agr, Inst Crop Sci, Beijing 100081, Peoples R China
[3] Chinese Acad Agr Sci, Inst Environm & Sustainable Dev Agr, Beijing 100081, Peoples R China
关键词
soil moisture; multisource remote sensing; machine learning; farming land; VEGETATION; INDEX; PERFORMANCE; PREDICT; RED;
D O I
10.3390/rs15174214
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Soil moisture is a key parameter for the circulation of water and energy exchange between surface and the atmosphere, playing an important role in hydrology, agriculture, and meteorology. Traditional methods for monitoring soil moisture suffer from spatial discontinuity, time-consuming processes, and high costs. Remote sensing technology enables the non-destructive and efficient retrieval of land information, allowing rapid soil moisture monitoring to schedule crop irrigation and evaluate the irrigation efficiency. Satellite data with different resolutions provide different observation scales. Evaluating the accuracy of estimating soil moisture based on open and free satellite data, as well as exploring the comprehensiveness and adaptability of different satellites for soil moisture temporal and spatial observations, are important research contents of current soil moisture monitoring. The study utilized three types of satellite data, namely GF-1, Landsat-8, and GF-4, with respective temporal and spatial resolutions of 16 m (every 4 days), 30 m (every 16 days), and 50 m (daily). The gray relational analysis (GRA) was employed to identify vegetation indices that selected sensitivity to soil moisture at varying depths (3 cm, 10 cm, and 20 cm). Then, this study employed random forest (RF), Extra Tree (ETr), and linear regression (LR) algorithms to estimate soil moisture at different depths with optical satellite data sources. The results showed that the accuracy of soil moisture estimation was different at different growth stages. The model accuracy exhibited an upward trend during the middle and late growth stages, coinciding with higher vegetation coverage; however, it demonstrated a decline in accuracy during the early and late growth stages due to either the absence or limited presence of vegetation. Among the three satellite images, the vegetation indices derived from GF-1 exhibited were more sensitive to vegetation characteristics and demonstrated superior soil moisture estimation accuracy (with R2 ranging 0.129-0.928, RMSE ranging 0.017-0.078), followed by Landsat-8 (with R2 ranging 0.117-0.862, RMSE ranging 0.017-0.088). The soil moisture estimation accuracy of GF-4 was the worst (with R2 ranging 0.070-0.921, RMSE ranging 0.020-0.140). Thus, GF-1 is suitable for vegetated areas. In addition, the ETr model outperformed the other models in both accuracy and stability (ETr model: R2 ranging from 0.117 to 0.928, RMSE ranging from 0.021 to 0.091; RF model: R2 ranging from 0.225 to 0.926, RMSE ranging from 0.019 to 0.085; LR model: R2 ranging from 0.048 to 0.733, RMSE ranging from 0.030 to 0.144). Utilizing GF-1 is recommended to construct the ETr model for assessing soil moisture variations in the farming land of northern China. Therefore, in cases where there are limited ground sample data, it is advisable to utilize high-spatiotemporal-resolution remote sensing data, along with machine learning algorithms such as ETr and RF, which are suitable for small samples, for soil moisture estimation.
引用
收藏
页数:22
相关论文
共 71 条
  • [31] Multi-Source Hydrological Data Products to Monitor High Asian River Basins and Regional Water Security
    Menenti, Massimo
    Li, Xin
    Jia, Li
    Yang, Kun
    Pellicciotti, Francesca
    Mancini, Marco
    Shi, Jiancheng
    Escorihuela, Maria Jose
    Zheng, Chaolei
    Chen, Qiting
    Lu, Jing
    Zhou, Jie
    Hu, Guangcheng
    Ren, Shaoting
    Zhang, Jing
    Liu, Qinhuo
    Qiu, Yubao
    Huang, Chunlin
    Zhou, Ji
    Han, Xujun
    Pan, Xiaoduo
    Li, Hongyi
    Wu, Yerong
    Ding, Baohong
    Yang, Wei
    Buri, Pascal
    McCarthy, Michael J.
    Miles, Evan S.
    Shaw, Thomas E.
    Ma, Chunfeng
    Zhou, Yanzhao
    Corbari, Chiara
    Li, Rui
    Zhao, Tianjie
    Stefan, Vivien
    Gao, Qi
    Zhang, Jingxiao
    Xie, Qiuxia
    Wang, Ning
    Sun, Yibo
    Mo, Xinyu
    Jia, Junru
    Jouberton, Achille Pierre
    Kneib, Marin
    Fugger, Stefan
    Paciolla, Nicola
    Paolini, Giovanni
    [J]. REMOTE SENSING, 2021, 13 (24)
  • [32] Normalized difference chlorophyll index: A novel model for remote estimation of chlorophyll-a concentration in turbid productive waters
    Mishra, Sachidananda
    Mishra, Deepak R.
    [J]. REMOTE SENSING OF ENVIRONMENT, 2012, 117 : 394 - 406
  • [33] Improving the Spatiotemporal Resolution of Soil Moisture through a Synergistic Combination of MODIS and LANDSAT8 Data
    Negahbani, Sanaz
    Momeni, Mehdi
    Moradizadeh, Mina
    [J]. WATER RESOURCES MANAGEMENT, 2022, 36 (06) : 1813 - 1832
  • [34] A low-cost approach for soil moisture prediction using multi-sensor data and machine learning algorithm
    Nguyen, Thu Thuy
    Ngo, Huu Hao
    Guo, Wenshan
    Chang, Soon Woong
    Nguyen, Dinh Duc
    Nguyen, Chi Trung
    Zhang, Jian
    Liang, Shuang
    Bui, Xuan Thanh
    Hoang, Ngoc Bich
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2022, 833
  • [35] Suitability Evaluation of Typical Drought Index in Soil Moisture Retrieval and Monitoring Based on Optical Images
    Nie, Yan
    Tan, Ying
    Deng, Yuqin
    Yu, Jing
    [J]. REMOTE SENSING, 2020, 12 (16)
  • [36] Measurement of soil water content and electrical conductivity by time domain reflectometry: a review
    Noborio, K
    [J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2001, 31 (03) : 213 - 237
  • [37] Soil Moisture Variability in India: Relationship of Land Surface-Atmosphere Fields Using Maximum Covariance Analysis
    Pangaluru, Kishore
    Velicogna, Isabella
    Geruo, A.
    Mohajerani, Yara
    Ciraci, Enrico
    Charakola, Sravani
    Basha, Ghouse
    Rao, S. Vijaya Bhaskara
    [J]. REMOTE SENSING, 2019, 11 (03):
  • [38] A MODIFIED SOIL ADJUSTED VEGETATION INDEX
    QI, J
    CHEHBOUNI, A
    HUETE, AR
    KERR, YH
    SOROOSHIAN, S
    [J]. REMOTE SENSING OF ENVIRONMENT, 1994, 48 (02) : 119 - 126
  • [39] Retrieval model for total nitrogen concentration based on UAV hyper spectral remote sensing data and machine learning algorithms - A case study in the Miyun Reservoir, China
    Qun'ou, Jiang
    Lidan, Xu
    Siyang, Sun
    Meilin, Wang
    Huijie, Xiao
    [J]. ECOLOGICAL INDICATORS, 2021, 124
  • [40] Assessment of plant nitrogen stress in wheat (Triticum aestivum L.) through hyperspectral indices
    Ranjan, Rajeev
    Chopra, Usha Kiran
    Sahoo, Rabi N.
    Singh, Anil Kumar
    Pradhan, Sanatan
    [J]. INTERNATIONAL JOURNAL OF REMOTE SENSING, 2012, 33 (20) : 6342 - 6360