Citation: | Xingyu Yan, Kui Xu, Wenqiang Feng, Jing Chen. A Rapid Prediction Model of Urban Flood Inundation in a High-Risk Area Coupling Machine Learning and Numerical Simulation Approaches[J]. International Journal of Disaster Risk Science, 2021, 12(6): 903-918. doi: 10.1007/s13753-021-00384-0 |
Ahiablame, L., and R. Shakya. 2016. Modeling flood reduction effects of low impact development at a watershed scale. Journal of Environmental Management 171: 81-91.
|
Banik, B.K., L. Alfonso, A.S. Torres, A. Mynett, C.D. Cristo, and A. Leopardi. 2015. Optimal placement of water quality monitoring stations in sewer systems: An information theory approach. Procedia Engineering 119: 1308-1317.
|
Beck, J. 2016. Comparison of three methodologies for Quasi-2D river flood modeling with SWMM5. Journal of Water Management Modeling. https://doi.org/10.14796/JWMM.C402
|
Bowes, B.D., J.M. Sadler, M.M. Morsy, M. Behl, and J.L. Goodall. 2019. Forecasting groundwater table in a flood prone coastal city with long short-term memory and recurrent neural networks. Water 11(5): Article 1098.
|
Guo, Z., J.P. Leitao, N.E. Simoes, and V. Moosavi. 2020. Data-driven flood emulation: Speeding up urban flood predictions by deep convolutional neural networks. Journal of Flood Risk Management 14(1): Article e12684.
|
Hammond, M.J., A.S. Chen, S. Djordjevic, D. Butler, and O. Mark. 2015. Urban flood impact assessment: A state-of-the-art review. Urban Water Journal 12(1-2): 14-29.
|
Hou, J.M., N. Zhou, G. Chen, M. Huang, and G. Bai. 2021. Rapid forecasting of urban flood inundation using multiple machine learning models. Natural Hazards. https://doi.org/10.1007/s11069-021-04782-x
|
Huang, G.R., X. Wang, and W. Huang. 2017. Simulation of rainstorm water logging in urban area based on InfoWorks ICM Model. Water Resources and Power 35(2): 66-70; 60 (in Chinese).
|
Huang, J.H., C. Wang, and Z.H. Fan. 2020. Evolution of design rainfall pattern in Tianjin. Water Resources Protection 36(1): 38-43 (in Chinese).
|
Huff, F.A. 1967. Time distributions of heavy rainstorms in Illinois. Water Resources Research 3(4): 1007-1019.
|
Kabir, S., S. Patidar, X.L. Xia, Q.H. Liang, J. Neal, and G. Pender. 2020. A deep convolutional neural network model for rapid prediction of fluvial flood inundation. Journal of Hydrology 590: 2335-2356.
|
Keifer, C.J., and H.H. Chu. 1957. Synthetic storm pattern for drainage design. Journal of Hydraulics Division 83: 1-25.
|
Kim, H.I., and K.Y. Han. 2020. Data-driven approach for the rapid simulation of urban flood prediction. KSCE Journal of Civil Engineering 24: 1932-1943.
|
Kim, H.I., H.J. Keum, and K.Y. Han. 2019. Real-time urban inundation prediction combining hydraulic and probabilistic methods. Water 11(2): Article 293.
|
Krupka, M. 2009. A rapid inundation flood cell model for flood risk analysis. Edinburgh, UK: Heriot-Watt University.
|
Lee, J.Y., C. Choi, D. Kang, B.S. Kim, and T.W. Kim. 2020. Estimating design floods at ungauged watersheds in South Korea using machine learning models. Water 12(11): Article 3022.
|
Lee, J., and B. Kim. 2021. Scenario-based real-time flood prediction with logistic regression. Water 13(9): Article 1191.
|
Leitao, J.P., N.E. Simoes, C. Maksimovic, F. Ferreira, D. Prodanovic, J.S. Matos, and A. Sa Marques. 2010. Real-time forecasting urban drainage models: Full or simplified networks?. Water Science and Technology 62(9): 2106-2114.
|
Li, X.H., and P. Willems. 2020. A hybrid model for fast and probabilistic urban pluvial flood prediction. Water Resources Research 56(6): Article e2019WR025128.
|
Liu, Y., S. Zhang, L. Liu, X. Wang, and H. Huang. 2015. Research on urban flood simulation: A review from the smart city perspective. Progress in Geography 34(4): 494-504.
|
María, T.C., G. Jorge, and E. Cristián. 2020. Forecasting flood hazards in real time: A surrogate model for hydrometeorological events in an Andean watershed. Natural Hazards and Earth System Sciences 20(12): 3261-3277.
|
May, W. 2008. Potential future changes in the characteristics of daily precipitation in Europe simulated by the HIRHAM regional climate model. Climate Dynamics 30(6): 581-603.
|
Meng, L., H. Wu, J.X. Wang, and M. Lei. 2009. Application of Elman neural network to width spread prediction in Medium Plate Mill. In Proceedings of the 2009 International Conference on Measuring Technology and Mechatronics Automation, 11-12 April 2009, Zhangjiajie, China:187-190.
|
Moulin, L., E. Gaume, and C. Obled. 2009. Uncertainties on mean areal precipitation: Assessment and impact on streamflow simulations. Hydrology and Earth System Sciences 13(2): 99-114.
|
Mounce, S.R., W. Shepherd, G. Sailor, J. Shucksmith, and A.J. Saul. 2014. Predicting combined sewer overflows chamber depth using artificial neural networks with rainfall radar data. Water Science and Technology 69(6): 1326-1333.
|
Nash, J.E., and J.V. Sutcliffe. 1970. River flow forecasting through conceptual models part I-A discussion of principles. Journal of Hydrology 10(3): 282-290.
|
Rjeily, Y.A., O. Abbas, M. Sadek, I. Shahrour, and F.H. Chehade. 2017. Flood forecasting within urban drainage systems using NARX neural network. Water Science and Technology 76(9): 2401-2412.
|
Santhi, C., J.G. Arnold, J.R. Williams, W.A. Dugas, R. Srinivasan, and L.M. Hauck. 2010. Validation of the SWAT model on a large river basin with point and nonpoint sources. Journal of the American Water Resources Association 37(5): 1169-1188.
|
She, L., and X.Y. You. 2019. A dynamic flow forecast model for urban drainage using the coupled artificial neural network. Water Resources Management 33(9): 3143-3153.
|
Wan, X., Q. Yang, P. Jiang, and P. Zhong. 2019. A hybrid model for real-time probabilistic flood forecasting using Elman neural network with heterogeneity of error distributions. Water Resources Management 33(11): 4027-4050.
|
Wei, M., L. She, and X.Y. You. 2020. Establishment of urban waterlogging pre-warning system based on coupling RBF-NARX neural networks. Water Science and Technology 82(9): 1921-1931.
|
Wu, H.C., and G.R. Huang. 2016. Risk assessment of urban waterlogging based on PCSWMM model. Water Resources Protection 32(05): 11-16 (in Chinese).
|
Wu, Z., Y. Zhou, and H. Wang. 2020. Real-time prediction of the water accumulation process of urban stormy accumulation points based on deep learning. IEEE Access 8: 151938-151951.
|
Yan, J., J.M. Jin, F.R. Chen, G. Yu, H.L. Yin, and W.J. Wang. 2018. Urban flash flood forecast using support vector machine and numerical simulation. Journal of Hydroinformatics 20(1): 221-231.
|
Yin, J., M. Ye, Z. Yin, and S. Xu. 2015. A review of advances in urban flood risk analysis over China. Stochastic Environmental Research and Risk Assessment 29: 1063-1070.
|
Zanchetta, A.D.L., and P. Coulibaly. 2020. Recent advances in real-time pluvial flash flood forecasting. Water 12(2): Article 570.
|
Zeng, Z., Z. Wang, X. Wu, C. Lai, and X. Chen. 2017. Rainstorm waterlogging simulations based on SWMM and LISFLOOD models. Journal of Hydroelectric Engineering 36(5): 68-77 (in Chinese).
|
Zhang, M., L.F. Zhao, and X. Quan. 2019. Application of Echo State Network in the prediction of water level at urban waterlogging points. China Rural Water and Hydropower (6): 56-59; 65 (in Chinese).
|
Zhang, S., and B. Pan. 2014. An urban storm-inundation simulation method based on GIS. Journal of Hydrology 517(5): 260-268.
|
Zheng, S.S., Q. Wan, and M.Y. Jia. 2014. Short-term forecasting of waterlogging at urban storm-waterlogging monitoring sites based on STARMA model. Progress in Geography 33(7): 949-957 (in Chinese).
|