Environmental Earth Sciences, Journal Year: 2024, Volume and Issue: 83(8)
Published: April 1, 2024
Language: Английский
Environmental Earth Sciences, Journal Year: 2024, Volume and Issue: 83(8)
Published: April 1, 2024
Language: Английский
Journal of Cleaner Production, Journal Year: 2022, Volume and Issue: 346, P. 131205 - 131205
Published: March 4, 2022
Language: Английский
Citations
79Communications Earth & Environment, Journal Year: 2023, Volume and Issue: 4(1)
Published: May 10, 2023
Abstract Landslides are notoriously difficult to predict because numerous spatially and temporally varying factors contribute slope stability. Artificial neural networks (ANN) have been shown improve prediction accuracy but largely uninterpretable. Here we introduce an additive ANN optimization framework assess landslide susceptibility, as well dataset division outcome interpretation techniques. We refer our approach, which features full interpretability, high accuracy, generalizability low model complexity, superposable network (SNN) optimization. validate approach by training models on inventories from three different easternmost Himalaya regions. Our SNN outperformed physically-based statistical achieved similar performance state-of-the-art deep networks. The found the product of precipitation hillslope aspect be important primary contributors highlights importance strong slope-climate couplings, along with microclimates, occurrences.
Language: Английский
Citations
44Journal of Cleaner Production, Journal Year: 2021, Volume and Issue: 320, P. 128713 - 128713
Published: Aug. 20, 2021
Language: Английский
Citations
94Geocarto International, Journal Year: 2021, Volume and Issue: 37(23), P. 6713 - 6735
Published: July 12, 2021
Flood-susceptibility mapping is an important component of flood risk management to control the effects natural hazards and prevention injury. We used a remote-sensing geographic information system (GIS) platform machine-learning model develop susceptibility map Kangsabati River Basin, India where flash common due monsoon precipitation with short duration high intensity. And in this subtropical region, climate change's impact helps influence distribution rainfall temperature variation. tested three models-particle swarm optimization (PSO), artificial neural network (ANN), deep-leaning (DLNN)-and prepared final classify flood-prone regions study area. Environmental, topographical, hydrological, geological conditions were included models, was selected based on relations between potentiality causative factors multi-collinearity analysis. The results validated evaluated using area under receiver operating characteristic (ROC) curve (AUC), which indicator current state environment value >0.95 implies greater floods. AUC values for ANN, DLNN, PSO training datasets 0.914, 0.920, 0.942, respectively. Among these showed best performance 0.942. approach applicable eastern part India, allow mitigation help improve region.
Language: Английский
Citations
78Journal of Environmental Management, Journal Year: 2021, Volume and Issue: 305, P. 114317 - 114317
Published: Dec. 24, 2021
Language: Английский
Citations
78Geomatics Natural Hazards and Risk, Journal Year: 2022, Volume and Issue: 13(1), P. 949 - 974
Published: April 11, 2022
Flood is a common global natural hazard, and detailed flood susceptibility maps for specific watersheds are important management measures. We compute the map Kaiser watershed in Iran using machine learning models such as support vector (SVM), Particle swarm optimization (PSO), genetic algorithm (GA) along with ensembles (PSO-GA SVM-GA). The application of assessment mapping analyzed, future research suggestions presented. model was constructed based on fifteen causatives: slope, slope aspect, elevation, plan curvature, land use, cover, normalize differences vegetation index (NDVI), convergence (CI), topographical wetness (TWI), topographic positioning Index (TPI), drainage density (DD), distance to stream, terrain ruggedness (TRI), surface texture (TST), geology stream power (SPI) inventory data which later divided by 70% training 30% validated model. output evaluated through sensitivity, specificity, accuracy, precision, Cohen Kappa, F-score, receiver operating curve (ROC). evaluation method shows robust results from (0.839), particle (0.851), (0.874), SVM-GA (0.886), PSO-GA (0.902). Compared have done some methods commonly used this assessment. A high-quality, informative database essential classification types that very helpful improve performances. performance ensemble better than model, yielding high degree accuracy (AUC-0.902%). Our approach, therefore, provides novel studies other watersheds.
Language: Английский
Citations
57Journal of Cleaner Production, Journal Year: 2022, Volume and Issue: 336, P. 130407 - 130407
Published: Jan. 6, 2022
Language: Английский
Citations
42Remote Sensing, Journal Year: 2023, Volume and Issue: 15(3), P. 798 - 798
Published: Jan. 31, 2023
Landslide is a natural disaster that seriously affects human life and social development. In this study, the characteristics effectiveness of convolutional neural network (CNN) conventional machine learning (ML) methods in landslide susceptibility assessment (LSA) are compared. Six ML used study Adaboost, multilayer perceptron (MLP-NN), random forest (RF), naive Bayes, decision tree (DT), gradient boosting (GBDT). First, basic knowledge structures CNN methods, steps LSA introduced. Then, 11 conditioning factors three categories Hongxi River Basin, Pingwu County, Mianyang City, Sichuan Province chosen to build train, validation, test samples. The models constructed based on these For comparison, indicator statistical maps (LSMs) used. result shows can obtain highest accuracy (86.41%) AUC (0.9249) LSA. represented by mean variance TP TN perform more firmly possibility occurrence. Furthermore, LSMs show all successfully identify most points, but for areas with low frequency landslides, some insufficient. model demonstrates better results recognition landslides’ cluster region, also related convolution operation takes surrounding environment information into account. higher concentrative great significance prevention mitigation, which help efficient use material resources. Although performs than other there still limitations, identification low-cluster landside be enhanced improving model.
Language: Английский
Citations
35Land, Journal Year: 2023, Volume and Issue: 12(2), P. 468 - 468
Published: Feb. 13, 2023
Landslides are prevalent in the Western Ghats, and incidences that happened 2021 Koottickal area of Kottayam district (Western Ghats) resulted loss 10 lives. The objectives this study to assess landslide susceptibility high-range local self-governments (LSGs) using analytical hierarchy process (AHP) fuzzy-AHP (F-AHP) models compare performance existing susceptible maps. This never witnessed any massive landslides dimension, which warrants necessity relooking into landslide-susceptible models. For AHP F-AHP modeling, ten conditioning factors were selected: slope, soil texture, land use/land cover (LULC), geomorphology, road buffer, lithology, satellite image-derived indices such as normalized difference index (NDRLI), water (NDWI), burn ratio (NBR), soil-adjusted vegetation (SAVI). zones categorized three: low, moderate, high. validation maps created receiver operating characteristic (ROC) technique ascertained performances AHP, F-AHP, TISSA excellent, with an under ROC curve (AUC) value above 0.80, NCESS map acceptable, AUC 0.70. Though is negligible, prepared model has better (AUC = 0.889) than 0.872), 0.867), 0.789) employing other matrices accuracy, mean absolute error (MAE), root square (RMSE) also confirmed (0.869, 0.226, 0.122, respectively) performance, followed by (0.856, 0.243, 0.147, respectively), (0.855, 0.249, 0.159, (0.770, 0.309, 0.177, most landslide-inducing identified through LULC, NDRLI. Koottickal, Poonjar-Thekkekara, Moonnilavu, Thalanad, Koruthodu LSGs highly landslides. identification areas diversified techniques will aid decision-makers identifying critical infrastructure at risk alternate routes for emergency evacuation people safer terrain during exigency.
Language: Английский
Citations
28Journal of the Indian Society of Remote Sensing, Journal Year: 2023, Volume and Issue: 51(8), P. 1739 - 1756
Published: July 28, 2023
Language: Английский
Citations
24