Using machine learning algorithms to predict groundwater levels in Indonesian

被引:30
|
作者
Hikouei, Iman Salehi [1 ]
Eshleman, Keith N. [1 ]
Saharjo, Bambang Hero [2 ]
Graham, Laura L. B. [3 ,4 ]
Applegate, Grahame [4 ]
Cochrane, Mark A. [1 ]
机构
[1] Univ Maryland, Ctr Environm Sci, Appalachian Lab, Frostburg, MD 21532 USA
[2] IPB Univ, Fac Forestry, Bogor 16680, Indonesia
[3] Borneo Orangurtm Survival Fdn, Palangka Raya, Indonesia
[4] Univ Sunshine Coast, Trop Forests & People Res Ctr, Sippy Downs, Qld 4556, Australia
关键词
Tropical peatland; Groundwater level; Extreme gradient boosting; Random forest; Wildfire; CENTRAL KALIMANTAN; RANDOM FOREST; PEAT FIRES; MODELS; PEATLANDS; MATTER; TABLE;
D O I
10.1016/j.scitotenv.2022.159701
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Tropical peatlands play a vital role in the global carbon cycle as large carbon reservoirs and substantial carbon sinks. Indonesia possesses the largest share (65 %) of tropical peat carbon, equal to 57.4 Gt C. Human perturbations such as extensive logging, deforestation and canalization exacerbate water losses, especially during dry seasons, when low precipitation and high evapotranspiration rates combine with the increased drainage to lower groundwater levels. Drying and increasing temperatures of the surface peat exacerbate ignition and wildfire risks within the peat soils. As such, it is critically important to know how groundwater levels in peatlands are changing over space and time. In this study, a multilinear regression model as well as two machine learning algorithms, random forest and extreme gradient boosting, were used to model groundwater level over the study period (2010-12) within a peat dome impacted by drainage canals and multiple wildfires in Central Kalimantan, Indonesia. Although all three models performed well, based on overall fit, spatial modeling of groundwater level results revealed that extreme gradient boosting (R2 = 0.998, RMSE = 0.048 m) outperformed random forest (R2 = 0.997, RMSE = 0.054 m) and multilinear regression (R2 = 0.970, RMSE = 0.221 m) near drainage canals, which are key fire ignition risk locations in the peatlands. Our study also shows that, on average, elevation and precipitation are the most important parameters influencing groundwater level spatiotemporally.
引用
收藏
页数:11
相关论文
共 50 条
  • [31] Modeling the Influence of Groundwater Exploitation on Land Subsidence Susceptibility Using Machine Learning Algorithms
    Mahtab Zamanirad
    Amirpouya Sarraf
    Hossein Sedghi
    Ali Saremi
    Payman Rezaee
    Natural Resources Research, 2020, 29 : 1127 - 1141
  • [32] Groundwater level prediction using machine learning algorithms in a drought-prone area
    Pham, Quoc Bao
    Kumar, Manish
    Di Nunno, Fabio
    Elbeltagi, Ahmed
    Granata, Francesco
    Islam, Abu Reza Md. Towfiqul
    Talukdar, Swapan
    Nguyen, X. Cuong
    Ahmed, Ali Najah
    Anh, Duong Tran
    Neural Computing and Applications, 2022, 34 (13) : 10751 - 10773
  • [33] Potential of machine learning algorithms in groundwater level prediction using temporal gravity data
    Sarkar, Himangshu
    Goriwale, Swastik Sunil
    Ghosh, Jayanta Kumar
    Ojha, Chandra Shekhar Prasad
    Ghosh, Sanjay Kumar
    GROUNDWATER FOR SUSTAINABLE DEVELOPMENT, 2024, 25
  • [34] Groundwater level prediction using machine learning algorithms in a drought-prone area
    Quoc Bao Pham
    Kumar, Manish
    Di Nunno, Fabio
    Elbeltagi, Ahmed
    Granata, Francesco
    Islam, Abu Reza Md Towfiqul
    Talukdar, Swapan
    X Cuong Nguyen
    Ahmed, Ali Najah
    Duong Tran Anh
    NEURAL COMPUTING & APPLICATIONS, 2022, 34 (13): : 10751 - 10773
  • [35] Groundwater level prediction using machine learning algorithms in a drought-prone area
    Quoc Bao Pham
    Manish Kumar
    Fabio Di Nunno
    Ahmed Elbeltagi
    Francesco Granata
    Abu Reza Md. Towfiqul Islam
    Swapan Talukdar
    X. Cuong Nguyen
    Ali Najah Ahmed
    Duong Tran Anh
    Neural Computing and Applications, 2022, 34 : 10751 - 10773
  • [36] Modeling the Influence of Groundwater Exploitation on Land Subsidence Susceptibility Using Machine Learning Algorithms
    Zamanirad, Mahtab
    Sarraf, Amirpouya
    Sedghi, Hossein
    Saremi, Ali
    Rezaee, Payman
    NATURAL RESOURCES RESEARCH, 2020, 29 (02) : 1127 - 1141
  • [37] APPLICATION OF MACHINE LEARNING ALGORITHMS TO PREDICT HOTEL OCCUPANCY
    Kozlovskis, Konstantins
    Liu, Yuanyuan
    Lace, Natalja
    Meng, Yun
    JOURNAL OF BUSINESS ECONOMICS AND MANAGEMENT, 2023, 24 (03) : 594 - 613
  • [38] Application of geospatial and machine learning algorithms to predict (under certain limitations) the quality of groundwater used for irrigation purposes
    Raheja, Hemant
    Goel, Arun
    Pal, Mahesh
    Water Supply, 2024, 24 (11) : 3724 - 3743
  • [39] Comparing the Performance of Machine Learning Algorithms for Groundwater Mapping in Delhi
    Zainab Khan
    Mohammad Mohsin
    Sk Ajim Ali
    Deepika Vashishtha
    Mujahid Husain
    Adeeba Parveen
    Syed Kausar Shamim
    Farhana Parvin
    Rukhsar Anjum
    Sania Jawaid
    Zeba Khanam
    Ateeque Ahmad
    Journal of the Indian Society of Remote Sensing, 2024, 52 : 17 - 39
  • [40] Machine learning for groundwater levels: uncovering the best predictors
    Abu Saleh, Md.
    Rasel, H. M.
    SUSTAINABLE WATER RESOURCES MANAGEMENT, 2024, 10 (05)