Saha, Sunil, Saha, Anik, Hembram, Tusar Kanti, Mandal, Kanu, Sarkar, Raju, Bhardwaj, Dhruv (2022) Prediction of spatial landslide susceptibility applying the novel ensembles of CNN, GLM and random forest in the Indian Himalayan region. Stochastic Environmental Research and Risk Assessment, 36 (10) 3597-3616 doi:10.1007/s00477-022-02212-3
Reference Type | Journal (article/letter/editorial) | ||
---|---|---|---|
Title | Prediction of spatial landslide susceptibility applying the novel ensembles of CNN, GLM and random forest in the Indian Himalayan region | ||
Journal | Stochastic Environmental Research and Risk Assessment | ||
Authors | Saha, Sunil | Author | |
Saha, Anik | Author | ||
Hembram, Tusar Kanti | Author | ||
Mandal, Kanu | Author | ||
Sarkar, Raju | Author | ||
Bhardwaj, Dhruv | Author | ||
Year | 2022 (October) | Volume | 36 |
Issue | 10 | ||
Publisher | Springer Science and Business Media LLC | ||
DOI | doi:10.1007/s00477-022-02212-3Search in ResearchGate | ||
Generate Citation Formats | |||
Mindat Ref. ID | 15401467 | Long-form Identifier | mindat:1:5:15401467:4 |
GUID | 0 | ||
Full Reference | Saha, Sunil, Saha, Anik, Hembram, Tusar Kanti, Mandal, Kanu, Sarkar, Raju, Bhardwaj, Dhruv (2022) Prediction of spatial landslide susceptibility applying the novel ensembles of CNN, GLM and random forest in the Indian Himalayan region. Stochastic Environmental Research and Risk Assessment, 36 (10) 3597-3616 doi:10.1007/s00477-022-02212-3 | ||
Plain Text | Saha, Sunil, Saha, Anik, Hembram, Tusar Kanti, Mandal, Kanu, Sarkar, Raju, Bhardwaj, Dhruv (2022) Prediction of spatial landslide susceptibility applying the novel ensembles of CNN, GLM and random forest in the Indian Himalayan region. Stochastic Environmental Research and Risk Assessment, 36 (10) 3597-3616 doi:10.1007/s00477-022-02212-3 | ||
In | (2022, October) Stochastic Environmental Research and Risk Assessment Vol. 36 (10) Springer Science and Business Media LLC |
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