Efficient Prediction of Discharge and Water Levels Using Ensemble Learning and Singular-Spectrum Analysis-based Denoising
Anh Duy Nguyen, Viet Hung Vu, Minh Hieu Nguyen, Duc Viet Hoang, Thanh Hung Nguyen, Kien Nguyen, Phi Le Nguyen
the 34th International Conference on Industrial, Engineering & Other Applications of Applied Intelligent Systems (IEA/AIE 2021), July 2021. [pdf document]

<Abstract>

This work addresses forecasting two essential factors in river hydrodynamics, which are discharge (Q) and water (H) levels. The accurate forecast of the two has long been a challenge in hydrological researches and flood prediction. While the traditional statistical models fail to capture the peak discharge during flooding seasons (i.e., due to the excessive level values), the simulationfs numerical models face the difficulty of precise input parameters (e.g., measured values of surface zones, root zones, etc.). The emerging deep learning shows a lot of potential in solving the challenges of Q and H prediction. However, applying deep learning in such a context is not straightforward due to the following critical issues. First, the amount of training data is insufficient due to the data collection is non-trivial. Second, although lacking, the collected data incurs noises (e.g., measurement errors). We aim to overcome those shortcomings in a newly proposed deep learning model that accurately predicts Q and H. The model is a new ensemble of the one- dimensional convolutional neural network (1D-CNN), long short term memory (LSTM) models, to handle the insufficient data issue. Moreover, we adopt the Singular-Spectrum Analysis technique to eliminate noise from the collected data. The experimental results show that our proposed approach outperforms existing methods.

 

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