Deep Learning-Based Simulation of Surface Suspended Sediment Concentration in the Yangtze Estuary during Typhoon In-Fa

Author:

Ren Zhongda1,Liu Chuanjie2,Ou Yafei1,Zhang Peng3,Fan Heshan1,Zhao Xiaolong4,Cheng Heqin1ORCID,Teng Lizhi1,Tang Ming15,Zhou Fengnian2

Affiliation:

1. State Key Laboratory of Estuarine and Coastal Research, East China Normal University, Shanghai 200241, China

2. Yangtze River Water Resources Commiss, Yangtze River Hydrol & Water Resources Survey Bur, Shanghai 200136, China

3. College of Intelligent Information Engineering, Chongqing Aerospace Polytechnic College, Chongqing 400021, China

4. School of Geographic Sciences, East China Normal University, Shanghai 200241, China

5. School of Computer Engineering and Science, Shanghai University, Shanghai 200444, China

Abstract

Effectively simulating the variation in suspended sediment concentration (SSC) in estuaries during typhoons is significant for the water quality and ecological conditions of estuarine shoal wetlands and their adjacent coastal waters. During typhoons, SSC undergoes large variations due to the significant changes in meteorological and hydrological factors such as waves, wind speed, and precipitation, which increases the difficulty in simulating SSC. Therefore, in this study, we use an optimized Principal Component Analysis Long Short-Term Memory (PCA-LSTM) framework with an attention mechanism to simulate the SSC in the Yangtze Estuary during Typhoon In-Fa. First, we integrate data from different sources into a multi-source dataset. Second, we use the PCA to reduce the dimensionality of the multi-source data and eliminate redundant variables in the feature data. Third, we introduce an attention mechanism to optimize the long and short-term memory (LSTM) model. Finally, we use the differential evolution (DE) algorithm for hyperparameter selection and merge the feature data with the SSC data as the input of the optimized LSTM network to simulate SSC. The results showed that SSC’s fitting coefficients (R2) at four hydrological stations improved by 7.5%, 6.1%, 7.4%, and 7.8%, respectively, using the attention-based PCA-LSTM compared to the PCA-LSTM. Moreover, compared to the traditional LSTM model, the R2 was improved by 33.8%, 30.5%, 32.0%, and 28.6%, respectively, using the attention-based PCA-LSTM framework. The study indicates that the selection of input variables can affect the model results. Introducing an attention mechanism can effectively optimize the PCA-LSTM framework and improve the simulation accuracy, which helps simulate the non-linear process of SSC variation occurring during Typhoon In-Fa.

Funder

National Natural Science Foundation of China

China Geological Survey

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

Reference37 articles.

1. Suspended sediment and sediment-associated contaminants in San Francisco Bay;Schoellhamer;Environ. Res.,2007

2. A study of the surficial suspended sediment concentration in response to typhoons in the Yangtze Estuary;Wang;J. East China Norm. Univ. (Nat. Sci.),2019

3. Investigating typhoon impact on SSC through hourly satellite and real-time field observations: A case study of the Yangtze Estuary;Tang;Cont. Shelf Res.,2021

4. Quantifying suspended sediment dynamics in mega deltas using remote sensing data: A case study of the Mekong floodplains;Dang;Int. J. Appl. Earth Obs. Geoinf.,2018

5. Multi-station runoff-sediment modeling using seasonal LSTM models;Nourani;J. Hydrol.,2021

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