Creating a spatially continuous air temperature dataset for Taiwan using thermal remote-sensing data and machine learning algorithms

被引:8
|
作者
Tran, Duy-Phien [1 ,2 ]
Liou, Yuei-An [1 ]
机构
[1] Natl Cent Univ, Ctr Space & Remote Sensing Res, 300 Jhongda Rd, Taoyuan City 320317, Taiwan
[2] Vietnam Acad Sci & Technol, Inst Geog, 18 Hoang Quoc Viet Rd, Hanoi City, Vietnam
关键词
Air temperature; Land surface temperature; Machine learning; XGB; MODIS; LAND-SURFACE-TEMPERATURE; URBAN HEAT ISLANDS; ESTIMATING DAILY MAXIMUM; SATELLITE DATA; MODIS DATA; MINIMUM; REFINEMENTS; VALIDATION; RESOLUTION; RETRIEVAL;
D O I
10.1016/j.ecolind.2023.111469
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
Weather stations can provide accurate and high temporal resolution air temperature (Ta) measurements, but their limited spatial coverage due to sparse distribution poses an issue and challenge. However, satellite data can offer land surface temperature (LST) observations with high spatial coverage, which have a strong relationship with Ta, making them ideal for enhancing Ta estimation. This study uses satellite-derived and auxiliary data to create a monthly mean Ta dataset with a 1 km resolution over Taiwan from 2003 to 2020. We employed three machine learning (ML) algorithms and seven different datasets comprising 12 explanatory variables with LST obtained from the MODIS to find the optimal combination of algorithm and dataset for Ta estimation in Taiwan. We applied recursive feature elimination (RFE) to reduce the model complexity and overfitting issues. For model assessment, we used five-fold cross-validation to evaluate the ML models, and indicators such as the coefficient of determination (R2), mean absolute error (MAE), and root mean square of error (RMSE) were employed. The results show that the XGB regressor performed the best among the three models with the highest accuracy. The RFE using the XGB model suggested eight selected variables, including nighttime LST, daytime LST, elevation, longitude, latitude, distance to the sea, month, and year. Based on the variance importance analysis, nighttime LST was the most crucial variable, followed by daytime LST and month. We found that the final monthly Ta dataset using the XGB model had an excellent five-fold cross-validated performance (R2 = 0.986, MAE = 0.477 degrees C, and RMSE = 0.639 degrees C). Furthermore, the XGB model not only performed well throughout all four seasons but also had high and consistent accuracy across months, years, and subsets, indicating its potential for accurately estimating Ta in Taiwan's complex topographic features with varying climate conditions. The resulting monthly Ta dataset created by our model can be an essential input for environmental studies.
引用
收藏
页数:23
相关论文
共 50 条
  • [41] Fusion of Geochemical and Remote-Sensing Data for Lithological Mapping Using Random Forest Metric Learning
    Wang, Ziye
    Zuo, Renguang
    Jing, Linhai
    MATHEMATICAL GEOSCIENCES, 2021, 53 (06) : 1125 - 1145
  • [42] Estimating soil moisture using remote sensing data: A machine learning approach
    Ahmad, Sajjad
    Kalra, Ajay
    Stephen, Haroon
    ADVANCES IN WATER RESOURCES, 2010, 33 (01) : 69 - 80
  • [43] Forest Community Spatial Modeling Using Machine Learning and Remote Sensing Data
    Gafurov, Artur
    Prokhorov, Vadim
    Kozhevnikova, Maria
    Usmanov, Bulat
    REMOTE SENSING, 2024, 16 (08)
  • [44] Vehicle emission prediction using remote sensing data and machine learning techniques
    Chen, Jiazhen
    Dobbie, Gillian
    Koh, Yun Sing
    Somervell, Elizabeth
    Olivares, Gustavo
    33RD ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING, 2018, : 444 - 451
  • [45] Environmental hazard assessment and monitoring for air pollution using machine learning and remote sensing
    S. Abu El-Magd
    G. Soliman
    M. Morsy
    S. Kharbish
    International Journal of Environmental Science and Technology, 2023, 20 : 6103 - 6116
  • [46] Predicting energy poverty with combinations of remote-sensing and socioeconomic survey data in India: Evidence from machine learning
    Wang, Hanjie
    Maruejols, Lucie
    Yu, Xiaohua
    ENERGY ECONOMICS, 2021, 102
  • [47] Environmental hazard assessment and monitoring for air pollution using machine learning and remote sensing
    Abu El-Magd, S.
    Soliman, G.
    Morsy, M.
    Kharbish, S.
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL SCIENCE AND TECHNOLOGY, 2023, 20 (06) : 6103 - 6116
  • [48] Comparison of Climate Reanalysis and Remote-Sensing Data for Predicting Olive Phenology through Machine-Learning Methods
    Azpiroz, Izar
    Oses, Noelia
    Quartulli, Marco
    Olaizola, Igor G.
    Guidotti, Diego
    Marchi, Susanna
    REMOTE SENSING, 2021, 13 (06)
  • [49] Air Pollution Effects on Climate and Air Temperature of Tehran City Using Remote Sensing Data
    Raoufi, Seyyed Sadeq
    Goharnejad, Hamid
    Niri, Mahmoud Zakeri
    ASIAN JOURNAL OF WATER ENVIRONMENT AND POLLUTION, 2018, 15 (02) : 79 - 87
  • [50] Ground surface structure classification using UAV remote sensing images and machine learning algorithms
    Fan, Ching Lung
    APPLIED GEOMATICS, 2023, 15 (04) : 919 - 931