Lake Water Temperature Modeling Using Physics-Informed Neural Networks (Papers Track)
Trieu Vo (Florida International University); Cuong Nguyen (Durham University); Dongsheng Luo (Florida International University); Leonardo Bobadilla (Florida International University)
Abstract
Assessing water quality in bodies of water is important in evaluating the effects of climate change and its anthropogenic impacts. Such assessments often require good models of key indices such as water temperature, pH, or oxygen levels. In this work, we investigate time series models for lake water temperatures at multiple depths and develop a physics-informed neural network based on Koopman embeddings and LSTM that is capable of forecasting water temperatures in the long term. Experiment results show that our model can achieve a good performance and significantly outperforms the conventional LSTM model for this time series forecasting problem.