Using an interpretable deep learning model for the prediction of riverine suspended sediment load.

Journal: Environmental science and pollution research international
Published Date:

Abstract

The prediction of suspended sediment load (SSL) within riverine systems is critical to understanding the watershed's hydrology. Therefore, the novelty of our research is developing an interpretable (explainable) model based on deep learning (DL) and Shapley Additive ExPlanations (SHAP) interpretation technique for prediction of SSL in the riverine systems. This paper investigates the abilities of four DL models, including dense deep neural networks (DDNN), long short-term memory (LSTM), gated recurrent unit (GRU), and simple recurrent neural network (RNN) models for the prediction of daily SSL using river discharge and rainfall data at a daily time scale in the Taleghan River watershed, northwestern Tehran, Iran. The performance of models was evaluated by using several quantitative and graphical criteria. The effect of parameter settings on the performance of deep models on SSL prediction was also investigated. The optimal optimization algorithms, maximum iteration (MI), and batch size (BC) were obtained for modeling daily SSL, and structure of the model impact on prediction remarkably. The comparison of prediction accuracy of the models illustrated that DDNN (with R = 0.96, RMSE = 333.46) outperformed LSTM (R = 0.75, RMSE = 786.20), GRU (R = 0.73, RMSE = 825.67), and simple RNN (R = 0.78, RMSE = 741.45). Furthermore, the Taylor diagram confirmed that DDNN has the highest performance among other models. Interpretation techniques can address the black-box nature of models, and here, SHAP was applied to develop an interpretable DL model to interpret of DL model's output. The results of SHAP showed that river discharge has the strongest impact on the model's output in estimating SSL. Overall, we conclude that DL models have great potential in watersheds to predict SSL. Therefore, different interpretation techniques as tools to interpret DL model's output (DL model is as black-box model) are recommended in future research.

Authors

  • Zeinab Mohammadi-Raigani
    Department of Natural Resources Engineering, University of Hormozgan, Bandar‑Abbas, Hormozgan, Iran.
  • Hamid Gholami
    Department of Natural Resources Engineering, University of Hormozgan, Bandar-Abbas, Hormozgan, Iran. hgholami@hormozgan.ac.ir.
  • Aliakbar Mohamadifar
    Department of Natural Resources Engineering, University of Hormozgan, Bandar‑Abbas, Hormozgan, Iran.
  • Aliakbar Nazari Samani
    Department of Arid and Mountainous Regions Reclamation, Faculty of Natural Resources, University of Tehran, Tehran, Iran.
  • Biswajeet Pradhan
    School of Systems, Management, and Leadership, Faculty of Engineering and IT, University of Technology Sydney, New South Wales, Australia; Department of Energy and Mineral Resources Engineering, Choongmu-gwan, Sejong University, 209 Neungdong-ro Gwangjin-gu, 05006 Seoul, South Korea.