A Comparative Analysis of Machine Learning Techniques for National Glacier Mapping: Evaluating Performance through Spatial Cross-Validation in Perú

被引:2
|
作者
Bueno, Marcelo [1 ]
Macera, Briggitte [1 ]
Montoya, Nilton [1 ]
机构
[1] Univ Nacl San Antonio Abad del Cusco UNSAAC, Dept Acad Agr, Cuzco 08000, Peru
关键词
spatial modeling; machine learning; glacier mapping; glacier retreat; climate change; spatial autocorrelation; spatial cross-validation; CORDILLERA BLANCA; TROPICAL ANDES; VILCANOTA; CLASSIFICATION; ALGORITHMS; FRAMEWORK; ACCURACY; RETREAT; MODELS; TRENDS;
D O I
10.3390/w15244214
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Accurate glacier mapping is crucial for assessing future water security in Andean ecosystems. Traditional accuracy assessment may be biased due to overlooking spatial autocorrelation during map validation. In recent years, spatial cross-validation (CV) strategies have been proposed in environmental and ecological modeling to reduce bias in predictive accuracy. In this study, we demonstrate the influence of spatial autocorrelation on the accuracy assessment of glacier surface predictive models. This is achieved by comparing the performance of several widely used machine learning algorithms including the gradient-boosting machines (GBM), k-nearest neighbors (KNN), random forest (RF), and logistic regression (LR) for mapping nine main Peruvian glacier regions. Spatial and non-spatial cross-validation methods were used to evaluate the model's classification errors in terms of the Matthews correlation coefficient. Performance differences of up to 18% were found between bias-reduced (spatial) and overoptimistic (non-spatial) cross-validation results. Regarding only spatial CV, the k-nearest neighbors were the overall best model across Huallanca (0.90), Huayhuasha (0.78), Huaytapallana (0.96), Raura (0.93), Urubamba (0.96), Vilcabamba (0.93), and Vilcanota (0.92) regions, consistently demonstrating the highest performance followed by logistic regression at Blanca (0.95) and Central (0.97) regions. Our validation approach, accounting for spatial characteristics, provides valuable insights for glacier mapping studies and future efforts on glacier retreat monitoring. Incorporating this approach improves the reliability of glacier mapping, guiding future national-level initiatives.
引用
收藏
页数:21
相关论文
共 50 条
  • [21] Evaluating Solar Power Forecasting Robustness: A Comparative Analysis of XGBoost, RNN, KNN, RF, and LSTM with emphasis on Lagged Steps, Sensitivity, and Cross-Validation Techniques
    Kiasari, Mahmoud
    Aly, Hamed H.
    2024 IEEE CANADIAN CONFERENCE ON ELECTRICAL AND COMPUTER ENGINEERING, CCECE 2024, 2024, : 686 - 692
  • [22] On Splitting Training and Validation Set: A Comparative Study of Cross-Validation, Bootstrap and Systematic Sampling for Estimating the Generalization Performance of Supervised Learning
    Xu Y.
    Goodacre R.
    Journal of Analysis and Testing, 2018, 2 (3) : 249 - 262
  • [23] Cross-validation of machine learning algorithms for malware detection using static features of Windows portable executables: A Comparative Study
    Aslam, Warda
    Fraz, M. M.
    Rizvi, S. K.
    Saleem, S.
    2020 IEEE 17TH INTERNATIONAL CONFERENCE ON SMART COMMUNITIES: IMPROVING QUALITY OF LIFE USING ICT, IOT AND AI (IEEEHONET 2020), 2020, : 73 - 77
  • [24] Comparative Analysis of Supervised Machine Learning Algorithms for Evaluating the Performance Level of Students
    Subha, S.
    Priya, S. Baghavathi
    PROCEEDINGS OF THE 2021 FIFTH INTERNATIONAL CONFERENCE ON I-SMAC (IOT IN SOCIAL, MOBILE, ANALYTICS AND CLOUD) (I-SMAC 2021), 2021, : 348 - 357
  • [25] Evaluating explorative prediction power of machine learning algorithms for materials discovery using k-fold forward cross-validation
    Xiong, Zheng
    Cui, Yuxin
    Liu, Zhonghao
    Zhao, Yong
    Hu, Ming
    Hu, Jianjun
    COMPUTATIONAL MATERIALS SCIENCE, 2020, 171
  • [26] Gully erosion susceptibility mapping (GESM) using machine learning methods optimized by the multi-collinearity analysis and K-fold cross-validation
    Ghorbanzadeh, Omid
    Shahabi, Hejar
    Mirchooli, Fahimeh
    Valizadeh Kamran, Khalil
    Lim, Samsung
    Aryal, Jagannath
    Jarihani, Ben
    Blaschke, Thomas
    GEOMATICS NATURAL HAZARDS & RISK, 2020, 11 (01) : 1653 - 1678
  • [27] Implanted Knee Kinematics Prediction: comparative performance analysis of machine learning techniques
    Hossain, Belayat
    Morooka, Takatoshi
    Okuno, Makiko
    Nii, Manabu
    Yoshiya, Shinichi
    Kobashi, Syoji
    2018 JOINT 7TH INTERNATIONAL CONFERENCE ON INFORMATICS, ELECTRONICS & VISION (ICIEV) AND 2018 2ND INTERNATIONAL CONFERENCE ON IMAGING, VISION & PATTERN RECOGNITION (ICIVPR), 2018, : 544 - 549
  • [28] Weather Impact on Solar Farm Performance: A Comparative Analysis of Machine Learning Techniques
    Gopi, Ajith
    Sharma, Prabhakar
    Sudhakar, Kumarasamy
    Ngui, Wai Keng
    Kirpichnikova, Irina
    Cuce, Erdem
    SUSTAINABILITY, 2023, 15 (01)
  • [29] Comparative analysis of machine learning techniques for metamaterial absorber performance in terahertz applications
    Jain, Prince
    Islam, Mohammad Tariqul
    Alshammari, Ahmed S.
    ALEXANDRIA ENGINEERING JOURNAL, 2024, 103 : 51 - 59
  • [30] Comparative Machine-Learning Approach: A Follow-Up Study on Type 2 Diabetes Predictions by Cross-Validation Methods
    Battineni, Gopi
    Sagaro, Getu Gamo
    Nalini, Chintalapudi
    Amenta, Francesco
    Tayebati, Seyed Khosrow
    MACHINES, 2019, 7 (04)