Toward explainable flood risk prediction: Integrating a novel hybrid machine learning model

被引:1
|
作者
Wang, Yongyang [1 ]
Zhang, Pan [2 ]
Xie, Yulei [2 ]
Chen, Lei [3 ]
Li, Yu [1 ]
机构
[1] Dalian Univ Technol, Sch Hydraul Engn, Dalian, Liaoning, Peoples R China
[2] Guangdong Univ Technol, Inst Environm & Ecol Engn, Guangdong Prov Key Lab Water Qual Improvement & Ec, Guangzhou 510006, Peoples R China
[3] Chinese Acad Sci, Guangzhou Inst Energy Convers, 2 Nengyuan Rd, Guangzhou 510640, Peoples R China
关键词
Flood risk; Hybrid ML model; Spatial characteristics; Shapley additive explanation; CONVOLUTIONAL NEURAL-NETWORKS;
D O I
10.1016/j.scs.2025.106140
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Flood risk assessment is critical for mitigating economic losses and enhancing urban disaster resilience, especially as climate change and rapid urbanization increase flood vulnerability. However, traditional machine learning models often struggle to capture complex spatial patterns and nonlinear relationships, limiting their predictive accuracy. To address this challenge, this study introduces an innovative hybrid machine learning model, 2D-CNN-CapsNet-WOA, designed to enhance urban flood risk prediction. By integrating the strengths of convolutional neural networks (CNN), capsule networks (CapsNet), and the whale optimization algorithm (WOA), the proposed model effectively identifies high-risk areas and key influencing factors. The findings demonstrate that the model not only achieves high predictive performance but also uncovers critical insights into urban flood dynamics. High-risk zones were predominantly concentrated in central urban areas, such as Guangzhou, Shenzhen, and Foshan, reflecting their high exposure to flood hazards. In contrast, low-risk regions were observed in peripheral and mountainous areas like Zhaoqing, underscoring the spatial variability of flood risks. Key factors such as distance to hospitals (DTH) and distance to water bodies (DTW) emerged as primary drivers of flood risk, while natural factors such as the Sediment Transport Index (STI), Stream Power Index (SPI), and Topographic Wetness Index (TWI) had relatively lower impacts. This study contributes to advancing flood risk assessment by demonstrating the effectiveness of hybrid machine learning approaches in capturing spatial and contextual factors. Beyond the case study, the methodology provides a scalable and transferable framework for urban flood risk modeling, offering practical guidance for disaster management and urban planning in floodprone regions worldwide.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Shedding Light on the Black Box: Integrating Prediction Models and Explainability Using Explainable Machine Learning
    Zhang, Yucheng
    Zheng, Yuyan
    Wang, Dan
    Gu, Xiaowei
    Zyphur, Michael J.
    Xiao, Lin
    Liao, Shudi
    Deng, Yangyang
    ORGANIZATIONAL RESEARCH METHODS, 2025,
  • [22] Flood susceptibility mapping: Integrating machine learning and GIS for enhanced risk assessment
    Demissie, Zelalem
    Rimal, Prashant
    Seyoum, Wondwosen M.
    Dutta, Atri
    Rimmington, Glen
    APPLIED COMPUTING AND GEOSCIENCES, 2024, 23
  • [23] Machine-learning model for the prediction of preeclampsia - a step toward personalized risk assessment
    Shtar, Guy
    Rokach, Lior
    Novack, Victor
    Novack, Lena
    Than, Gabor
    Laivouri, Hannele
    Farina, Antonio
    Hadar, Amnon G.
    Erez, Ofer
    AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2022, 226 (01) : S171 - S171
  • [24] Air quality prediction by integrating mechanism model and machine learning model
    Liao, Haibin
    Yuan, Li
    Wu, Mou
    Chen, Hongsheng
    SCIENCE OF THE TOTAL ENVIRONMENT, 2023, 899
  • [25] A hybrid machine learning approach for hypertension risk prediction
    Fang, Min
    Chen, Yingru
    Xue, Rui
    Wang, Huihui
    Chakraborty, Nilesh
    Su, Ting
    Dai, Yuyan
    NEURAL COMPUTING & APPLICATIONS, 2023, 35 (20): : 14487 - 14497
  • [26] A hybrid machine learning approach for hypertension risk prediction
    Min Fang
    Yingru Chen
    Rui Xue
    Huihui Wang
    Nilesh Chakraborty
    Ting Su
    Yuyan Dai
    Neural Computing and Applications, 2023, 35 : 14487 - 14497
  • [27] RISK STRATIFICATION FOR PATIENTS WITH MYASTHENIA GRAVIS: AN EXPLAINABLE MACHINE LEARNING MODEL
    Zhong, Huahua
    Ruan, Zhe
    Lv, Zhiguo
    Zheng, Xueying
    Xi, Jianying
    Song, Jie
    Yan, Chong
    Luo, Lijun
    Chu, Lan
    Tan, Song
    Zhang, Chao
    Bu, Bitao
    Luo, Sushan
    Chang, Ting
    Zhao, Chongbo
    MUSCLE & NERVE, 2022, 66 : S65 - S65
  • [28] Developing an Explainable Machine Learning-Based Personalised Dementia Risk Prediction Model: A Transfer Learning Approach With Ensemble Learning Algorithms
    Danso, Samuel O.
    Zeng, Zhanhang
    Muniz-Terrera, Graciela
    Ritchie, Craig W.
    FRONTIERS IN BIG DATA, 2021, 4
  • [29] Assessing chemical exposure risk in breastfeeding infants: An explainable machine learning model for human milk transfer prediction
    Huang, Xiaojie
    Chen, Jiajia
    Liu, Peineng
    ECOTOXICOLOGY AND ENVIRONMENTAL SAFETY, 2025, 289
  • [30] Explainable machine learning model for prediction of ground motion parameters with uncertainty quantification
    Chen Meng
    Wang Hua
    CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION, 2022, 65 (09): : 3386 - 3404