Skip to main content
Top
Published in: Water Resources Management 4/2024

10-01-2024

Enhancing Flooding Depth Forecasting Accuracy in an Urban Area Using a Novel Trend Forecasting Method

Authors: Song-Yue Yang, You-Da Jhong, Bing-Chen Jhong, Yun-Yang Lin

Published in: Water Resources Management | Issue 4/2024

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Accurate flood runoff and water level predictions are crucial research topics due to their significance for early warning systems, particularly in improving peak flood level forecasts and reducing time lags. This study proposes a novel method, Trend Forecasting Method (TFM), to improve model accuracy and overcome the time lag problem due to data scarcity. The proposed method includes the following steps: (1) select appropriate input factors causing flood events, (2) determine the most suitable AI method as the basis for forecasting models, (3) a forecasting model using a multi-step-ahead approach and a forecasting model with variation in flood depth as input are developed as compared to the selected model in Step 2, and (4) according to the rising limb and falling limb of a flood hydrograph, the maximum and minimum values predicted by the models above are respectively selected as the final outputs. The application to demonstrate the advantages of the proposed method was conducted in the Annan District of Tainan City, Taiwan. Of all the models tested, the Gated Recurrent Unit (GRU) demonstrated superior accuracy in forecasting flood depths, followed by Long Short-Term Memory (LSTM) and Bidirectional LSTM, with the Back Propagation Neural Network falling behind. With a Nash–Sutcliffe efficiency coefficient (NSE) of 0.56 for the next hour’s forecast, the GRU model’s structure appears particularly fitting for flood depth forecast. However, all four models showed time lag issues. TFM substantially enhanced the GRU model’s forecast accuracy, mitigating the time lag. TFM achieved an NSE of 0.82 for forecasting 10-, 20-, 30-, 40-, 50-, and 60-min lead time. The observed flood depths had a 68% probability of consistent rise or fall, validating TFM’s underlying hypothesis. Furthermore, including an autoregressive model in TFM reduced the time lag problem.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Literature
go back to reference Berkhahn S, Fuchs L, Neuweiler I (2019) An ensemble neural network model for real-time prediction of urban floods. J Hydrol 575:743–754CrossRef Berkhahn S, Fuchs L, Neuweiler I (2019) An ensemble neural network model for real-time prediction of urban floods. J Hydrol 575:743–754CrossRef
go back to reference Box GE, Jenkins GM, Reinsel GC, Ljung GM (2015) Time series analysis: forecasting and control. John Wiley & Sons Box GE, Jenkins GM, Reinsel GC, Ljung GM (2015) Time series analysis: forecasting and control. John Wiley & Sons
go back to reference Brockwell PJ, Davis RA (2016) Introduction to time series and forecasting. Springer, New YorkCrossRef Brockwell PJ, Davis RA (2016) Introduction to time series and forecasting. Springer, New YorkCrossRef
go back to reference Chakrabortty R, Pal SC, Ruidas D, Roy P, Saha A, Chowdhuri I (2023) Living with floods using state-of-the-art and geospatial techniques: flood mitigation alternatives, management measures, and policy recommendations. Water 15:558CrossRef Chakrabortty R, Pal SC, Ruidas D, Roy P, Saha A, Chowdhuri I (2023) Living with floods using state-of-the-art and geospatial techniques: flood mitigation alternatives, management measures, and policy recommendations. Water 15:558CrossRef
go back to reference Chatfield C, Xing H (2019) The analysis of time series: an introduction with R. CRC PressCrossRef Chatfield C, Xing H (2019) The analysis of time series: an introduction with R. CRC PressCrossRef
go back to reference Cho K, Van Merriënboer B, Gulcehre C, Bahdanau D, Bougares F, Schwenk H, Bengio Y (2014) Learning phrase representations using RNN encoder-decoder for statistical machine translation arXiv preprint arXiv:1406.1078 Cho K, Van Merriënboer B, Gulcehre C, Bahdanau D, Bougares F, Schwenk H, Bengio Y (2014) Learning phrase representations using RNN encoder-decoder for statistical machine translation arXiv preprint arXiv:​1406.​1078
go back to reference Chowdhuri I, Pal SC, Chakrabortty R (2020) Flood susceptibility mapping by ensemble evidential belief function and binomial logistic regression model on river basin of eastern India. Adv Space Res 65:1466–1489ADSCrossRef Chowdhuri I, Pal SC, Chakrabortty R (2020) Flood susceptibility mapping by ensemble evidential belief function and binomial logistic regression model on river basin of eastern India. Adv Space Res 65:1466–1489ADSCrossRef
go back to reference Chu H, Wu W, Wang QJ, Nathan R, Wei J (2020) An ANN-based emulation modelling framework for flood inundation modelling: Application, challenges and future directions. Environ Modell Softw 124:104587CrossRef Chu H, Wu W, Wang QJ, Nathan R, Wei J (2020) An ANN-based emulation modelling framework for flood inundation modelling: Application, challenges and future directions. Environ Modell Softw 124:104587CrossRef
go back to reference Cui Z, Zhou Y, Guo S, Wang J, Ba H, He S (2021) A novel hybrid XAJ-LSTM model for multi-step-ahead flood forecasting. Hydrol Res 52:1436–1454CrossRef Cui Z, Zhou Y, Guo S, Wang J, Ba H, He S (2021) A novel hybrid XAJ-LSTM model for multi-step-ahead flood forecasting. Hydrol Res 52:1436–1454CrossRef
go back to reference Dazzi S, Vacondio R, Mignosa P (2021) Flood stage forecasting using machine-learning methods: a case study on the Parma River (Italy). Water 13:1612CrossRef Dazzi S, Vacondio R, Mignosa P (2021) Flood stage forecasting using machine-learning methods: a case study on the Parma River (Italy). Water 13:1612CrossRef
go back to reference Ding Y, Zhu Y, Feng J, Zhang P, Cheng Z (2020) Interpretable spatio-temporal attention LSTM model for flood forecasting. Neurocomputing 403:348–359CrossRef Ding Y, Zhu Y, Feng J, Zhang P, Cheng Z (2020) Interpretable spatio-temporal attention LSTM model for flood forecasting. Neurocomputing 403:348–359CrossRef
go back to reference Du S, Van Rompaey A, Shi P, Ja W (2015) A dual effect of urban expansion on flood risk in the Pearl River Delta (China) revealed by land-use scenarios and direct runoff simulation. Nat Hazards 77:111–128CrossRef Du S, Van Rompaey A, Shi P, Ja W (2015) A dual effect of urban expansion on flood risk in the Pearl River Delta (China) revealed by land-use scenarios and direct runoff simulation. Nat Hazards 77:111–128CrossRef
go back to reference Graves A, Schmidhuber J (2005) Framewise phoneme classification with bidirectional LSTM and other neural network architectures. Neural Netw 18:602–610PubMedCrossRef Graves A, Schmidhuber J (2005) Framewise phoneme classification with bidirectional LSTM and other neural network architectures. Neural Netw 18:602–610PubMedCrossRef
go back to reference Guo Z, Leitão JP, Simões NE, Moosavi V (2021) Data-driven flood emulation: Speeding up urban flood predictions by deep convolutional neural networks. J Flood Risk Manag 14:e12684CrossRef Guo Z, Leitão JP, Simões NE, Moosavi V (2021) Data-driven flood emulation: Speeding up urban flood predictions by deep convolutional neural networks. J Flood Risk Manag 14:e12684CrossRef
go back to reference Hofmann J, Schüttrumpf H (2021) floodGAN: Using deep adversarial learning to predict pluvial flooding in real time. Water 13:2255CrossRef Hofmann J, Schüttrumpf H (2021) floodGAN: Using deep adversarial learning to predict pluvial flooding in real time. Water 13:2255CrossRef
go back to reference Hosseiny H (2021) A deep learning model for predicting river flood depth and extent. Environ Modell Softw 145:105186CrossRef Hosseiny H (2021) A deep learning model for predicting river flood depth and extent. Environ Modell Softw 145:105186CrossRef
go back to reference Hyndman RJ, Athanasopoulos G (2018) Forecasting: principles and practice. OTexts Hyndman RJ, Athanasopoulos G (2018) Forecasting: principles and practice. OTexts
go back to reference Imteaz MA, Hossain I (2023) Climate change impacts on ‘seasonality index’and its potential implications on rainwater savings. Water Resour Manag 37:2593–2606CrossRef Imteaz MA, Hossain I (2023) Climate change impacts on ‘seasonality index’and its potential implications on rainwater savings. Water Resour Manag 37:2593–2606CrossRef
go back to reference Jhong BC, Wang JH, Lin GF (2017) An integrated two-stage support vector machine approach to forecast inundation maps during typhoons. J Hydrol 547:236–252CrossRef Jhong BC, Wang JH, Lin GF (2017) An integrated two-stage support vector machine approach to forecast inundation maps during typhoons. J Hydrol 547:236–252CrossRef
go back to reference Kang H, Yang S, Huang J, Oh J (2020) Time series prediction of wastewater flow rate by bidirectional LSTM deep learning. Int J Control Autom Syst 18:3023–3030CrossRef Kang H, Yang S, Huang J, Oh J (2020) Time series prediction of wastewater flow rate by bidirectional LSTM deep learning. Int J Control Autom Syst 18:3023–3030CrossRef
go back to reference Kao IF, Liou JY, Lee MH, Chang FJ (2021) Fusing stacked autoencoder and long short-term memory for regional multistep-ahead flood inundation forecasts. J Hydrol 598:126371CrossRef Kao IF, Liou JY, Lee MH, Chang FJ (2021) Fusing stacked autoencoder and long short-term memory for regional multistep-ahead flood inundation forecasts. J Hydrol 598:126371CrossRef
go back to reference Kao IF, Zhou Y, Chang LC, Chang FJ (2020) Exploring a Long Short-Term Memory based Encoder-Decoder framework for multi-step-ahead flood forecasting. J Hydrol 583:124631CrossRef Kao IF, Zhou Y, Chang LC, Chang FJ (2020) Exploring a Long Short-Term Memory based Encoder-Decoder framework for multi-step-ahead flood forecasting. J Hydrol 583:124631CrossRef
go back to reference Kratzert F, Klotz D, Brenner C, Schulz K, Herrnegger M (2018) Rainfall–runoff modelling using long short-term memory (LSTM) networks. Hydrol Earth Syst Sci 22:6005–6022ADSCrossRef Kratzert F, Klotz D, Brenner C, Schulz K, Herrnegger M (2018) Rainfall–runoff modelling using long short-term memory (LSTM) networks. Hydrol Earth Syst Sci 22:6005–6022ADSCrossRef
go back to reference Meng M, Dąbrowski M, Tai Y, Stead D, Chan F (2019) Collaborative spatial planning in the face of flood risk in delta cities: A policy framing perspective. Environ Sci Policy 96:95–104CrossRef Meng M, Dąbrowski M, Tai Y, Stead D, Chan F (2019) Collaborative spatial planning in the face of flood risk in delta cities: A policy framing perspective. Environ Sci Policy 96:95–104CrossRef
go back to reference Najafabadipour A, Kamali G, Nezamabadi-Pour H (2022) Application of artificial intelligence techniques for the determination of groundwater level using spatio–temporal parameters. ACS Omega 7:10751–10764PubMedPubMedCentralCrossRef Najafabadipour A, Kamali G, Nezamabadi-Pour H (2022) Application of artificial intelligence techniques for the determination of groundwater level using spatio–temporal parameters. ACS Omega 7:10751–10764PubMedPubMedCentralCrossRef
go back to reference Nanda T, Sahoo B, Beria H, Chatterjee C (2016) A wavelet-based non-linear autoregressive with exogenous inputs (WNARX) dynamic neural network model for real-time flood forecasting using satellite-based rainfall products. J Hydrol 539:57–73CrossRef Nanda T, Sahoo B, Beria H, Chatterjee C (2016) A wavelet-based non-linear autoregressive with exogenous inputs (WNARX) dynamic neural network model for real-time flood forecasting using satellite-based rainfall products. J Hydrol 539:57–73CrossRef
go back to reference Nearing GS, Klotz D, Frame JM et al (2022) Data assimilation and autoregression for using near-real-time streamflow observations in long short-term memory networks. Hydrol Earth Syst Sci 26:5493–5513ADSCrossRef Nearing GS, Klotz D, Frame JM et al (2022) Data assimilation and autoregression for using near-real-time streamflow observations in long short-term memory networks. Hydrol Earth Syst Sci 26:5493–5513ADSCrossRef
go back to reference Palmitessa R, Mikkelsen PS, Borup M, Law AW (2021) Soft sensing of water depth in combined sewers using LSTM neural networks with missing observations. J Hydro-Environ Res 38:106–116CrossRef Palmitessa R, Mikkelsen PS, Borup M, Law AW (2021) Soft sensing of water depth in combined sewers using LSTM neural networks with missing observations. J Hydro-Environ Res 38:106–116CrossRef
go back to reference Plate EJ (2007) Early warning and flood forecasting for large rivers with the lower Mekong as example. J Hydro-Environ Res 1:80–94CrossRef Plate EJ (2007) Early warning and flood forecasting for large rivers with the lower Mekong as example. J Hydro-Environ Res 1:80–94CrossRef
go back to reference Roy P, Pal SC, Chakrabortty R, Chowdhuri I, Malik S, Das B (2020) Threats of climate and land use change on future flood susceptibility. J Clean Prod 272:122757CrossRef Roy P, Pal SC, Chakrabortty R, Chowdhuri I, Malik S, Das B (2020) Threats of climate and land use change on future flood susceptibility. J Clean Prod 272:122757CrossRef
go back to reference Ruidas D, Chakrabortty R, Islam ARMT, Saha A, Pal SC (2022) A novel hybrid of meta-optimization approach for flash flood-susceptibility assessment in a monsoon-dominated watershed. Eastern India Environ Earth Sci 81:145ADSCrossRef Ruidas D, Chakrabortty R, Islam ARMT, Saha A, Pal SC (2022) A novel hybrid of meta-optimization approach for flash flood-susceptibility assessment in a monsoon-dominated watershed. Eastern India Environ Earth Sci 81:145ADSCrossRef
go back to reference Ruidas D, Saha A, Islam ARMT, Costache R, Pal SC (2023) Development of geo-environmental factors controlled flash flood hazard map for emergency relief operation in complex hydro-geomorphic environment of tropical river, India. Environ Sci Pollut Res 30:106951–106966CrossRef Ruidas D, Saha A, Islam ARMT, Costache R, Pal SC (2023) Development of geo-environmental factors controlled flash flood hazard map for emergency relief operation in complex hydro-geomorphic environment of tropical river, India. Environ Sci Pollut Res 30:106951–106966CrossRef
go back to reference Schuetze T, Chelleri L (2013) Integrating decentralized rainwater management in urban planning and design: Flood resilient and sustainable water management using the example of coastal cities in the Netherlands and Taiwan. Water 5:593–616CrossRef Schuetze T, Chelleri L (2013) Integrating decentralized rainwater management in urban planning and design: Flood resilient and sustainable water management using the example of coastal cities in the Netherlands and Taiwan. Water 5:593–616CrossRef
go back to reference Sit M, Demiray BZ, Xiang Z, Ewing GJ, Sermet Y, Demir I (2020) A comprehensive review of deep learning applications in hydrology and water resources. Water Sci Technol 82:2635–2670PubMedCrossRef Sit M, Demiray BZ, Xiang Z, Ewing GJ, Sermet Y, Demir I (2020) A comprehensive review of deep learning applications in hydrology and water resources. Water Sci Technol 82:2635–2670PubMedCrossRef
go back to reference Sun W, Bocchini P, Davison BD (2020) Applications of artificial intelligence for disaster management. Nat Hazards 103:2631–2689CrossRef Sun W, Bocchini P, Davison BD (2020) Applications of artificial intelligence for disaster management. Nat Hazards 103:2631–2689CrossRef
go back to reference Vatanchi SM, Etemadfard H, Maghrebi MF, Shad R (2023) A comparative study on forecasting of long-term daily streamflow using ANN, ANFIS, BiLSTM, and CNN-GRU-LSTM. Water Resour Manag 37:4769–4785CrossRef Vatanchi SM, Etemadfard H, Maghrebi MF, Shad R (2023) A comparative study on forecasting of long-term daily streamflow using ANN, ANFIS, BiLSTM, and CNN-GRU-LSTM. Water Resour Manag 37:4769–4785CrossRef
go back to reference Wu J, Wang Z, Hu Y, Tao S, Dong J (2023) Runoff forecasting using convolutional neural networks and optimized bi-directional long short-term memory. Water Resour Manag 37:937–953CrossRef Wu J, Wang Z, Hu Y, Tao S, Dong J (2023) Runoff forecasting using convolutional neural networks and optimized bi-directional long short-term memory. Water Resour Manag 37:937–953CrossRef
go back to reference Xie H, Randall M, Chau K-w (2022) Green roof hydrological modelling with GRU and LSTM networks. Water Resour Manag 36:1107–1122CrossRef Xie H, Randall M, Chau K-w (2022) Green roof hydrological modelling with GRU and LSTM networks. Water Resour Manag 36:1107–1122CrossRef
go back to reference Yang SY, Jhong BC, Jhong YD, Tsai TT, Chen CS (2023) Long short-term memory integrating moving average method for flood inundation depth forecasting based on observed data in urban area. Nat Hazards 116:2339–2361 Yang SY, Jhong BC, Jhong YD, Tsai TT, Chen CS (2023) Long short-term memory integrating moving average method for flood inundation depth forecasting based on observed data in urban area. Nat Hazards 116:2339–2361
go back to reference Yang S, Yang D, Chen J, Zhao B (2019) Real-time reservoir operation using recurrent neural networks and inflow forecast from a distributed hydrological model. J Hydrol 579:124229CrossRef Yang S, Yang D, Chen J, Zhao B (2019) Real-time reservoir operation using recurrent neural networks and inflow forecast from a distributed hydrological model. J Hydrol 579:124229CrossRef
go back to reference Zhang G, Patuwo BE, Hu MY (1998) Forecasting with artificial neural networks: The state of the art. Int J Forecast 14:35–62CrossRef Zhang G, Patuwo BE, Hu MY (1998) Forecasting with artificial neural networks: The state of the art. Int J Forecast 14:35–62CrossRef
go back to reference Zhu S, Luo X, Yuan X, Xu Z (2020) An improved long short-term memory network for streamflow forecasting in the upper Yangtze River. Stoch Environ Res Risk Assess 34:1313–1329CrossRef Zhu S, Luo X, Yuan X, Xu Z (2020) An improved long short-term memory network for streamflow forecasting in the upper Yangtze River. Stoch Environ Res Risk Assess 34:1313–1329CrossRef
Metadata
Title
Enhancing Flooding Depth Forecasting Accuracy in an Urban Area Using a Novel Trend Forecasting Method
Authors
Song-Yue Yang
You-Da Jhong
Bing-Chen Jhong
Yun-Yang Lin
Publication date
10-01-2024
Publisher
Springer Netherlands
Published in
Water Resources Management / Issue 4/2024
Print ISSN: 0920-4741
Electronic ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-023-03725-4

Other articles of this Issue 4/2024

Water Resources Management 4/2024 Go to the issue