Physic Informed
Physics-informed machine learning integrates physical principles and domain knowledge into machine learning models to improve accuracy, efficiency, and interpretability, particularly when data is scarce or complex systems are involved. Current research focuses on developing and applying physics-informed neural networks (PINNs), DeepONets, and other architectures to diverse problems, including solving partial differential equations, modeling physical systems (e.g., fluid dynamics, structural mechanics), and improving AI reasoning. This approach is significantly impacting various fields by enabling faster, more accurate simulations, enhanced model generalization, and the development of more robust and reliable AI systems for scientific discovery and engineering applications.
Papers
AI-Aristotle: A Physics-Informed framework for Systems Biology Gray-Box Identification
Nazanin Ahmadi Daryakenari, Mario De Florio, Khemraj Shukla, George Em Karniadakis
ASAP: Automated Sequence Planning for Complex Robotic Assembly with Physical Feasibility
Yunsheng Tian, Karl D. D. Willis, Bassel Al Omari, Jieliang Luo, Pingchuan Ma, Yichen Li, Farhad Javid, Edward Gu, Joshua Jacob, Shinjiro Sueda, Hui Li, Sachin Chitta, Wojciech Matusik
Learning Generic Solutions for Multiphase Transport in Porous Media via the Flux Functions Operator
Waleed Diab, Omar Chaabi, Shayma Alkobaisi, Abeeb Awotunde, Mohammed Al Kobaisi
A physics-constrained machine learning method for mapping gapless land surface temperature
Jun Ma, Huanfeng Shen, Menghui Jiang, Liupeng Lin, Chunlei Meng, Chao Zeng, Huifang Li, Penghai Wu