Integrating deep learning, satellite image processing, and spatial-temporal analysis for urban flood prediction

被引:6
|
作者
Mohamadiazar, Nasim [1 ]
Ebrahimian, Ali [1 ]
Hosseiny, Hossein [2 ]
机构
[1] Florida Int Univ, Dept Civil & Environm Engn, 10555 W Flagler St, Miami, FL 33174 USA
[2] Villanova Univ, Dept Civil & Environm Engn, 800 Lancaster Ave, Villanova, PA 19085 USA
关键词
Near Real -Time Flood Mapping; Convolutional Neural Networks (CNN); U; -Net; Machine Learning; Florida; Sentinel-1; EFFECTIVE IMPERVIOUS AREA; LAND-USE; IMPACT; RUNOFF; MODELS; BASIN; TIDES;
D O I
10.1016/j.jhydrol.2024.131508
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Urban flooding is escalating worldwide due to the increasing impervious surfaces from urban developments and frequency of extreme rainfall events by climate change. Traditional flood extent prediction and mapping methods based on physical-based hydrological principles often face limitations due to model complexity and computational burden. In response to these challenges, there has been a notable shift toward satellite image processing and Artificial Intelligence (AI) based approaches, such as Deep Learning (DL) models, including architectures like Convolutional Neural Networks (CNN). The objective of this research is to predict near real-time (NRT) flood extents within urban areas. This research integrated CNN (U-Net) with Sentinel-1 satellite imagery, Digital Elevation Model (DEM), hydrologic soil group (HSG), imperviousness, and rainfall data to create a flood extent prediction model. To detect flooded areas, a binary raster map was created using calibrated backscatter values derived from the VV (vertical transmit and vertical receive) polarization mode of Sentinel-1 imagery, which was highlighted as having a significant impact on backscatter behavior and prediction results. Application of the model was demonstrated in urban areas of Miami-Dade County, Florida. The results demonstrated the capability of the model to provide rapid and accurate flood extent predictions at a spatial resolution of 10 m, with an overall accuracy of 97.05 %, F-1 Score of 92.49 %, and AUC of 93 % in the study area. The U-Net model's flood predictions were compared with historical floodplain data and then using GIS overlay analysis, resulting in a Ground Truth Index of 84.05 % that shows the accuracy of the model in identifying flooded areas. The research incorporated crucial flood-influencing data (including rainfall) to the flood extent prediction models and expanded the focus models beyond major rainfall events only to encompass a wider range of flood events. The presented NRT flood extent mapping model has a broad range of applicability, including, but not limited to, the continuous monitoring of flood events and their potential impacts on civil infrastructure assets (e.g., construction, operation, and maintenance of roads and bridges), early warning systems for timely evacuation and preparedness measures, and insurance risk assessment.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Learning Spatial-Temporal Consistency for Satellite Image Sequence Prediction
    Dai, Kuai
    Li, Xutao
    Ma, Chi
    Lu, Shenyuan
    Ye, Yunming
    Xian, Di
    Tian, Lin
    Qin, Danyu
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2023, 61
  • [2] Exploiting Spatial-Temporal Dynamics for Satellite Image Sequence Prediction
    Dai, Kuai
    Ma, Chi
    Wang, Zhaolin
    Long, Yongshen
    Li, Xutao
    Feng, Shanshan
    Ye, Yunming
    IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2023, 20
  • [3] A spatial-temporal graph deep learning model for urban flood nowcasting leveraging heterogeneous community features
    Farahmand, Hamed
    Xu, Yuanchang
    Mostafavi, Ali
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [4] Spatial-temporal attention wavenet: A deep learning framework for traffic prediction considering spatial-temporal dependencies
    Tian, Chenyu
    Chan, Wai Kin
    IET INTELLIGENT TRANSPORT SYSTEMS, 2021, 15 (04) : 549 - 561
  • [5] Prediction of spatial-temporal flood water level in agricultural fields using advanced machine learning and deep learning approaches
    Akinsoji, Adisa Hammed
    Adelodun, Bashir
    Adeyi, Qudus
    Salau, Rahmon Abiodun
    Odey, Golden
    Choi, Kyung Sook
    NATURAL HAZARDS, 2025,
  • [6] Hybrid Deep Learning approach for Urban Expressway Travel Time Prediction Considering Spatial-Temporal Features
    Zhang, Zhihao
    Chen, Peng
    Wang, Yunpeng
    Yu, Guizhen
    2017 IEEE 20TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2017,
  • [7] Revisiting Spatial-Temporal Similarity: A Deep Learning Framework for Traffic Prediction
    Yao, Huaxiu
    Tang, Xianfeng
    Wei, Hua
    Zheng, Guanjie
    Li, Zhenhui
    THIRTY-THIRD AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE / THIRTY-FIRST INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE CONFERENCE / NINTH AAAI SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2019, : 5668 - 5675
  • [8] A Deep Learning Framework with Spatial-Temporal Attention Mechanism for Cellular Traffic Prediction
    Gao, Yun
    Wei, Xin
    Zhou, Liang
    Lv, Haibing
    2019 IEEE GLOBECOM WORKSHOPS (GC WKSHPS), 2019,
  • [9] Traffic Prediction Using Attentional Spatial-Temporal Deep Learning with Accident Embedding
    Liyong, Wanida
    Vateekul, Peerapon
    2019 4TH INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND APPLICATIONS (ICCIA 2019), 2019, : 98 - 103
  • [10] Spatial-temporal prediction of air quality by deep learning and kriging interpolation approach
    Samal, K. Krishna Rani
    Babu, Korra Sathya
    Das, Santos Kumar
    EAI ENDORSED TRANSACTIONS ON SCALABLE INFORMATION SYSTEMS, 2023, 10 (05) : 1 - 14