H2Open Journal (Sep 2023)

Predictive uncertainty assessment in flood forecasting using quantile regression

  • Amina M. K.,
  • Chithra N. R

DOI
https://doi.org/10.2166/h2oj.2023.040
Journal volume & issue
Vol. 6, no. 3
pp. 477 – 492

Abstract

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Floods and their associated impacts are topics of concern in land development planning and management, which call for efficient flood forecasting and warning systems. The performance of flood warning systems is affected by uncertainty in water level forecasts, which is due to their inability to measure or calculate a modeled value accurately. Predictive uncertainty is an emerging type of uncertainty modeling technique that emphasizes total uncertainty quantified as a probability distribution conditioned on all available knowledge. Predictive uncertainty analysis was done using quantile regression (QR) for machine learning-based flood models – Hybrid Wavelet Artificial Neural Network model (WANN) and Hybrid Wavelet Support Vector Machine model (WSVM) for different lead times. Comparing QR models of WANN and WSVM revealed that the slope, intercept, spread of forecast, and width of confidence band of the WANN model are more for each quantile indicating more uncertainty as compared to the WSVM model. In both models, with an increase in lead time, uncertainty has shown an increasing trend as well. The performance evaluation of inference obtained from QR models was evaluated using uncertainty statistics such as prediction interval coverage probability, average relative interval length (ARIL), and mean prediction interval (MPI). HIGHLIGHTS Predictive uncertainty using quantile regression on two hybrid flood models, i.e. WANN and WSVM, is implemented.; Performance evaluation of quantile regression models is done using certain statistical methods such as average relative interval length and mean prediction interval.; The WSVM model is less uncertain than WANN.; With an increase in lead time, the confidence bandwidth is increased, which shows more uncertainty.;

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