Gradient boosting enhances physics-informed neural networks' performance by employing a sequence of neural networks.
Discovering slow invariant manifolds using a physics-informed neural network approach.
This work integrates physics-derived memristor models into machine learning frameworks to address device nonidealities and improve neural network accuracy. The main thesis is to bring physical dynamics into consideration while modeling nonidealities in memristive devices to guide the development of future integrated devices.
The author proposes using an LSTM-based ML model to predict systemic errors in storm surge forecasting models, leading to improved accuracy by correcting biases.