Physic Based Model
Physics-based models, foundational in many scientific and engineering disciplines, are increasingly being augmented or replaced by data-driven approaches, particularly deep learning, to improve efficiency and accuracy. Current research focuses on hybrid models that combine the strengths of both paradigms, leveraging neural networks (including recurrent, convolutional, and ordinary differential equation-based architectures) to learn complex relationships while incorporating physical constraints or principles. This integration aims to overcome limitations of purely physics-based or data-driven models, leading to more robust, accurate, and computationally efficient predictions across diverse applications, from weather forecasting and fluid dynamics to robotics and materials science.
Papers
Physics Embedded Neural Network Vehicle Model and Applications in Risk-Aware Autonomous Driving Using Latent Features
Taekyung Kim, Hojin Lee, Wonsuk Lee
Neural modal ordinary differential equations: Integrating physics-based modeling with neural ordinary differential equations for modeling high-dimensional monitored structures
Zhilu Lai, Wei Liu, Xudong Jian, Kiran Bacsa, Limin Sun, Eleni Chatzi