An interpretable deep learning model to map land subsidence hazard

被引:4
作者
Rahmani, Paria [1 ]
Gholami, Hamid [1 ]
Golzari, Shahram [2 ,3 ]
机构
[1] Univ Hormozgan, Dept Nat Resources Engn, Bandar Abbas, Hormozgan, Iran
[2] Univ Hormozgan, Dept Elect & Comp Engn, Bandar Abbas, Hormozgan, Iran
[3] Univ Hormozgan, Deep Learning Res Grp, Bandar Abbas, Hormozgan, Iran
关键词
Land subsidence; Deep learning; Game theory; Interpretability; SHAP;
D O I
10.1007/s11356-024-32280-7
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The main goal of this research is the interpretability of deep learning (DL) model output (e.g., CNN and LSTM) used to map land susceptibility to subsidence hazard by means of different techniques. For this purpose, an inventory map of land subsidence (LS) is prepared based on fieldwork and a record of LS presence points, and 16 features controlling LS were mapped. Thereafter, 11 effective features controlling LS were identified by means of a particle swarm optimization (PSO) algorithm, which was then used as input in the CNN and LSTM predictive models. To address the inherent black box nature of DL models, six interpretation methods (feature interaction, permutation importance plot (PFIM), bar plot, SHapley Additive exPlanations (SHAP) main plot, heatmap plot, and waterfall plot) were used to interpret the predictive model outputs. Both models (CNN and LSTM) had AUC > 90 and therefore provided excellent accuracy for mapping LS hazard. According to the most accurate model-the CNN predictive model-the range from very low to very high hazard classes occupied 20%, 20%, 25%, 16.3%, and 18.7% of the study area, respectively. According to three plots (bar plot, SHAP main plot, and heatmap plot), which were constructed based on the SHAP value, distance from the well, GDR and DEM were identified as the three most important features with the highest impact on the DL model output. The results of the waterfall plot indicate two effective features consisting of distance from the well and coarse fragment, and two effective features comprising landuse and DEM, contributed negatively and positively to LS, respectively. Overall, these explanation techniques can address critical concerns with respect to the interpretability of sophisticated DL predictive models.
引用
收藏
页码:17372 / 17386
页数:15
相关论文
共 59 条
  • [41] Assessment of groundwater vulnerability in an urban area: a comparative study based on DRASTIC, EBF, and LR models
    Mohammaddost, Alimahdi
    Mohammadi, Zargham
    Rezaei, Mohsen
    Pourghasemi, Hamid Reza
    Farahmand, Asadullah
    [J]. ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2022, 29 (48) : 72908 - 72928
  • [42] Assessment of the uncertainty and interpretability of deep learning models for mapping soil salinity using DeepQuantreg and game theory
    Mohammadifar, Aliakbar
    Gholami, Hamid
    Golzari, Shahram
    [J]. SCIENTIFIC REPORTS, 2022, 12 (01)
  • [43] Assessment of the interpretability of data mining for the spatial modelling of water erosion using game theory
    Mohammadifar, Aliakbar
    Gholami, Hamid
    Rodrigo Comino, Jesus
    Collins, Adrian L.
    [J]. CATENA, 2021, 200
  • [44] Game theory interpretation of digital soil mapping convolutional neural networks
    Padarian, Jose
    McBratney, Alex B.
    Minasny, Budiman
    [J]. SOIL, 2020, 6 (02) : 389 - 397
  • [45] Spatial flood susceptibility mapping using an explainable artificial intelligence (XAI) model
    Pradhan, Biswajeet
    Lee, Saro
    Dikshit, Abhirup
    Kim, Hyesu
    [J]. GEOSCIENCE FRONTIERS, 2023, 14 (06)
  • [46] Land subsidence modelling using tree-based machine learning algorithms
    Rahmati, Omid
    Falah, Fatemeh
    Naghibi, Seyed Amir
    Biggs, Trent
    Soltani, Milad
    Deo, Ravinesh C.
    Cerda, Artemi
    Mohammadi, Farnoush
    Dieu Tien Bui
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2019, 672 : 239 - 252
  • [47] A Survey of Deep Active Learning
    Ren, Pengzhen
    Xiao, Yun
    Chang, Xiaojun
    Huang, Po-Yao
    Li, Zhihui
    Gupta, Brij B.
    Chen, Xiaojiang
    Wang, Xin
    [J]. ACM COMPUTING SURVEYS, 2022, 54 (09)
  • [48] Mapping of the wind erodible fraction of soil by bidirectional gated recurrent unit (BiGRU) and bidirectional recurrent neural network (BiRNN) deep learning models
    Rezaei, Mahrooz
    Mohammadifar, Aliakbar
    Gholami, Hamid
    Mina, Monireh
    Riksen, Michel J. P. M.
    Ritsema, Coen
    [J]. CATENA, 2023, 223
  • [49] Rumelhart D.E, 1986, Learning Internal Representations by Error Propagation, P318, DOI 10.1016/b978-1-4832-1446-7.50035-2
  • [50] Deep learning
    Rusk, Nicole
    [J]. NATURE METHODS, 2016, 13 (01) : 35 - 35