Kim, S.; Chung, S. Enhancing Water Temperature Prediction in Stratified Reservoirs: A Process-Guided Deep Learning Approach. Water2023, 15, 3096.
Kim, S.; Chung, S. Enhancing Water Temperature Prediction in Stratified Reservoirs: A Process-Guided Deep Learning Approach. Water 2023, 15, 3096.
Kim, S.; Chung, S. Enhancing Water Temperature Prediction in Stratified Reservoirs: A Process-Guided Deep Learning Approach. Water2023, 15, 3096.
Kim, S.; Chung, S. Enhancing Water Temperature Prediction in Stratified Reservoirs: A Process-Guided Deep Learning Approach. Water 2023, 15, 3096.
Abstract
Data-driven models (DDMs) are extensively used in environmental modeling but face challenges due to limited training data and potential results not adhering to physical laws. To address this challenge, this study developed a process-guided deep learning (PGDL) model, integrating a long short-term memory (LSTM) neural network and a process-based model (PBM), CE-QUAL-W2 (W2), to predict water temperature in a stratified reservoir. The PGDL included an energy constraint term from W2's thermal energy equilibrium into the cost function of the LSTM, besides the mean square error term. In PGDL, parameters were optimized by penalizing deviations from the energy law, ensuring adherence to physical constraints. Compared to LSTM, PGDL demonstrated enhanced satisfaction with the energy balance and superior performance in water temperature prediction. Even with less field data for training, PGDL outperformed both LSTM and calibrated W2 after pre-training with data generated using the uncalibrated W2. Therefore, integration of DDM with a PBM ensured physical consistency in water temperature prediction for complex stratified reservoirs with limited data. Moreover, pre-training the PGDL with PBM proved highly effective in mitigating bias and variance due to insufficient field measurement data.
Keywords
CE-QUAL-W2; Daecheong Reservoir; Long short-term memory; Process guided deep learning; Water temperature
Subject
Environmental and Earth Sciences, Water Science and Technology
Copyright:
This is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.