A Systematic Literature Review on Classification Machine Learning for Urban Flood Hazard Mapping DOI
Maelaynayn El Baida,

Mohamed Hosni,

Farid Boushaba

et al.

Water Resources Management, Journal Year: 2024, Volume and Issue: 38(15), P. 5823 - 5864

Published: Aug. 3, 2024

Language: Английский

A Systematic Review of Disaster Management Systems: Approaches, Challenges, and Future Directions DOI Creative Commons
Saad Mazhar Khan, Imran Shafi, Wasi Haider Butt

et al.

Land, Journal Year: 2023, Volume and Issue: 12(8), P. 1514 - 1514

Published: July 29, 2023

Disaster management is a critical area that requires efficient methods and techniques to address various challenges. This comprehensive assessment offers an in-depth overview of disaster systems, methods, obstacles, potential future paths. Specifically, it focuses on flood control, significant recurrent category natural disasters. The analysis begins by exploring types catastrophes, including earthquakes, wildfires, floods. It then delves into the different domains collectively contribute effective management. These encompass cutting-edge technologies such as big data cloud computing, providing scalable reliable infrastructure for storage, processing, analysis. study investigates Internet Things sensor networks gather real-time from flood-prone areas, enhancing situational awareness enabling prompt actions. Model-driven engineering examined its utility in developing modeling scenarios, aiding preparation response planning. includes Google Earth engine (GEE) examines previous studies involving GEE. Moreover, we discuss remote sensing; sensing undoubtedly valuable tool management, geographical situations. We explore application Geographical Information System (GIS) Spatial Data Management visualizing analyzing spatial facilitating informed decision-making resource allocation during In final section, focus shifts utilization machine learning analytics methodologies offer predictive models data-driven insights, early warning risk assessment, mitigation strategies. Through this analysis, significance incorporating these spheres control procedures highlighted, with aim improving resilience regions. paper addresses existing challenges provides research directions, ultimately striving clearer more coherent representation techniques.

Language: Английский

Citations

70

A novel framework for urban flood risk assessment: Multiple perspectives and causal analysis DOI
Yongheng Wang, Qingtao Zhang, Kairong Lin

et al.

Water Research, Journal Year: 2024, Volume and Issue: 256, P. 121591 - 121591

Published: April 8, 2024

Language: Английский

Citations

23

The local coupling and telecoupling of urbanization and ecological environment quality based on multisource remote sensing data DOI
Wenjia Li, Min An, Hailin Wu

et al.

Journal of Environmental Management, Journal Year: 2022, Volume and Issue: 327, P. 116921 - 116921

Published: Dec. 1, 2022

Language: Английский

Citations

67

Flood susceptibility prediction using tree-based machine learning models in the GBA DOI
Hai‐Min Lyu, Zhen‐Yu Yin

Sustainable Cities and Society, Journal Year: 2023, Volume and Issue: 97, P. 104744 - 104744

Published: June 25, 2023

Language: Английский

Citations

44

A comparative analysis on flood risk assessment and management performances between Beijing and Munich DOI
Lu Peng, Yifei Wang, Liang Emlyn Yang

et al.

Environmental Impact Assessment Review, Journal Year: 2023, Volume and Issue: 104, P. 107319 - 107319

Published: Oct. 12, 2023

Language: Английский

Citations

32

Integrating machine learning and geospatial data analysis for comprehensive flood hazard assessment DOI Creative Commons
Chiranjit Singha, Vikas Kumar Rana,

Quoc Bao Pham

et al.

Environmental Science and Pollution Research, Journal Year: 2024, Volume and Issue: 31(35), P. 48497 - 48522

Published: July 20, 2024

Flooding is a major natural hazard worldwide, causing catastrophic damage to communities and infrastructure. Due climate change exacerbating extreme weather events robust flood modeling crucial support disaster resilience adaptation. This study uses multi-sourced geospatial datasets develop an advanced machine learning framework for assessment in the Arambag region of West Bengal, India. The inventory was constructed through Sentinel-1 SAR analysis global databases. Fifteen conditioning factors related topography, land cover, soil, rainfall, proximity, demographics were incorporated. Rigorous training testing diverse models, including RF, AdaBoost, rFerns, XGB, DeepBoost, GBM, SDA, BAM, monmlp, MARS algorithms, undertaken categorical mapping. Model optimization achieved statistical feature selection techniques. Accuracy metrics model interpretability methods like SHAP Boruta implemented evaluate predictive performance. According area under receiver operating characteristic curve (AUC), prediction accuracy models performed around > 80%. RF achieves AUC 0.847 at resampling factor 5, indicating strong discriminative AdaBoost also consistently exhibits good ability, with values 0.839 10. indicated precipitation elevation as most significantly contributing area. Most pointed out southern portions highly susceptible areas. On average, from 17.2 18.6% hazards. In analysis, various nature-inspired algorithms identified selected input parameters assessment, i.e., elevation, precipitation, distance rivers, TWI, geomorphology, lithology, TRI, slope, soil type, curvature, NDVI, roads, gMIS. As per analyses, it found that rivers play roles decision-making process assessment. results majority building footprints (15.27%) are high very risk, followed by those low risk (43.80%), (24.30%), moderate (16.63%). Similarly, cropland affected flooding this categorized into five classes: (16.85%), (17.28%), (16.07%), (16.51%), (33.29%). However, interdisciplinary contributes towards hydraulic hydrological management.

Language: Английский

Citations

15

Exploring the fidelity of satellite precipitation products in capturing flood risks: A novel framework incorporating hazard and vulnerability dimensions over a sensitive coastal multi-hazard catchment DOI
Dev Anand Thakur, Mohit Prakash Mohanty

The Science of The Total Environment, Journal Year: 2024, Volume and Issue: 920, P. 170884 - 170884

Published: Feb. 9, 2024

Language: Английский

Citations

11

Port's industry ecosystem construction: Empirical evidence from China DOI
Qiqi Zhang,

Xiaozhe Hu,

Zhenfu Li

et al.

Transport Policy, Journal Year: 2025, Volume and Issue: 163, P. 42 - 60

Published: Jan. 6, 2025

Language: Английский

Citations

2

A synergistic approach towards understanding flood risks over coastal multi-hazard environments: Appraisal of bivariate flood risk mapping through flood hazard, and socio-economic-cum-physical vulnerability dimensions DOI
Dev Anand Thakur, Mohit Prakash Mohanty

The Science of The Total Environment, Journal Year: 2023, Volume and Issue: 901, P. 166423 - 166423

Published: Aug. 21, 2023

Language: Английский

Citations

24

Output characteristics and driving factors of non-point source nitrogen (N) and phosphorus (P) in the Three Gorges reservoir area (TGRA) based on migration process: 1995–2020 DOI

Shaojun Tan,

Deti Xie, Jiupai Ni

et al.

The Science of The Total Environment, Journal Year: 2023, Volume and Issue: 875, P. 162543 - 162543

Published: March 5, 2023

Language: Английский

Citations

23