专题:Model Reduction and Neural Networks

This cluster of papers focuses on the development and application of physics-informed neural networks for scientific computing, particularly in the context of solving partial differential equations, model reduction, fluid dynamics, dynamic mode decomposition, and nonlinear systems. The research explores the integration of deep learning techniques with traditional numerical methods to address complex problems in physics-based modeling and simulation.
最新文献
Physics-informed neural networks in clean combustion: A pathway to sustainable aerospace propulsion

article Full Text OpenAlex

Unsupervised Constitutive Model Discovery from Sparse and Noisy Data

article Full Text OpenAlex

Physically consistent global atmospheric data assimilation with machine learning in latent space

article Full Text OpenAlex

Sensitivity analysis of Navier–Stokes equations with heat transfer using the first-order polynomial chaos method and FEV discretization

article Full Text OpenAlex

A Multi-Objective Point Response Prediction Method for Vertical Tail Buffeting Based on Elastic Scaling Transformation

article Full Text OpenAlex

Trait Locking Science_ A New Interdisciplinary Subject for Rigid Control of Core Traits in Dynamic Systems | 特质锁定学:一门聚焦动态系统核心特质刚性管控的新学科

article Full Text OpenAlex

A Framework for Implementation of Dynamic Discrepancy Reduced-Order Modeling in Advanced Process Control

article Full Text OpenAlex

Modeling nonlinear control systems via Koopman Control Family: Universal forms and subspace invariance proximity

article Full Text OpenAlex

On the Interplay Between Precision, Rank and Admissibility for Iterative Hierarchical Low-Rank Matrix Solvers

article Full Text OpenAlex

HyperNet N1 SDC: 6 Lane Multi-Model Orchestration Achieves 99.4% on HumanEval - HFLI Team Edition

article Full Text OpenAlex

近5年高被引文献
DiffuCpG

preprint Full Text OpenAlex 5537 FWCI0

Adding Conditional Control to Text-to-Image Diffusion Models

article Full Text OpenAlex 2835 FWCI876.17082653

Generative Adversarial Networks

book-chapter Full Text OpenAlex 2576 FWCI30.44961128

Scientific Machine Learning Through Physics–Informed Neural Networks: Where we are and What’s Next

article Full Text OpenAlex 1793 FWCI898.95824227

Diffusion Models in Vision: A Survey

article Full Text OpenAlex 1323 FWCI240.38017728

Classifier-Free Diffusion Guidance

preprint Full Text OpenAlex 728 FWCI0

Model reduction for nonlinear dynamical systems using deep convolutional autoencoders.

article Full Text OpenAlex 683 FWCI0

Deep physical neural networks trained with backpropagation

article Full Text OpenAlex 629 FWCI121.78686622

Gradient-enhanced physics-informed neural networks for forward and inverse PDE problems

article Full Text OpenAlex 532 FWCI268.71313117

Null-text Inversion for Editing Real Images using Guided Diffusion Models

article Full Text OpenAlex 500 FWCI90.98417005