Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Physics-Informed Neural Networks (PINNs) have gained attention for solving partial differential equations, including the scattered Helmholtz equation, due to their flexibility and mesh-free formulation. However, their performance suffers from low-frequency bias, particularly in high-frequency wavefield simulations, limiting convergence speed and accuracy. To address this, we propose a novel and simplified PINN framework that incorporates explicit, trainable Gabor basis functions to efficiently capture the localized and oscillatory nature of wavefields. Unlike previous Gabor-based PINNs that rely on multiplicative filters or auxiliary networks to learn Gabor parameters, our approach redefines the network's task as learning a nonlinear mapping from input coordinates to a custom Gabor coordinate system, where a Gabor function captures the dominant oscillatory behavior of the wavefield. This formulation absorbs the effect of two Gabor parameters into the learned mapping, reducing computational complexity and eliminating the need for manual tuning of hyperparameters. We also present an efficient formulation for incorporating a Perfectly Matched Layer (PML) into the training by deriving real-valued loss components and introducing an analytical expression for the background wavefield. Numerical experiments on various velocity models show that our Gabor-PINN achieves faster convergence, higher accuracy, and greater robustness to architectural design and initialization compared to both traditional PINNs and prior Gabor-based methods. The improvement lies not in adding architectural complexity-as is common in enhanced PINNs-but in absorbing this complexity into the learned coordinate transformation, making the method both simpler and more effective. Our implementation is publicly available to support reproducibility and future research.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.neunet.2025.107978DOI Listing

Publication Analysis

Top Keywords

physics-informed neural
8
neural networks
8
gabor parameters
8
gabor
5
gabor-enhanced physics-informed
4
networks fast
4
fast simulations
4
simulations acoustic
4
acoustic wavefields
4
wavefields physics-informed
4

Similar Publications

Robust tracking control of uncertain autoloaders by implicit Lyapunov method and scleronomic Lagrangian mechanics-informed neural network.

ISA Trans

September 2025

Key Laboratory of Metallurgical Equipment and Control Technology of Ministry of Education, Wuhan University of Science and Technology, Wuhan, 430081, Hubei, China; Hubei Key Laboratory of Mechanical Transmission and Manufacturing Engineering, Wuhan University of Science and Technology, Wuhan, 430081

The autoloader is a key subsystem in modern main battle tanks, mainly responsible for ammunition transfer, loading, and resupply. However, it often suffers from uncertainties induced by base oscillations, leading to potential instability. While various control strategies have been proposed, most rely on prior knowledge of such oscillations.

View Article and Find Full Text PDF

This study employs physics-informed neural networks (PINNs) to investigate the narrow escape problem in irregular domains, aiming to understand how key parameters influence molecular escape behavior and to analyze the most probable transition pathway of molecules. We focus on two critical metrics: mean exit time and escape probability, characterizing escape behavior in stochastic systems. Using PINNs, we effectively address the domain's complexities and examine the effects of parameters such as diffusion coefficient, angular velocity, annular area, and absorption domain size on mean exit time and escape probability.

View Article and Find Full Text PDF

Physics-informed neural network for hydraulic prediction in open-channel water transfer projects with sparse monitoring data.

Water Res

August 2025

College of Agriculture Science and Engineering, Hohai University, Nanjing 210098, China; College of Hydraulic and Civil Engineering, XiZang Agriculture and Animal Husbandry College, Linzhi 860000, China. Electronic address:

Open-channel water transfer projects play a crucial role in addressing regional water supply-demand imbalances, and real-time, comprehensive, and accurate acquisition of their hydrodynamic spatiotemporal evolution is essential for ensuring safety and efficiency of water conveyance and optimizing scheduling strategies. While hydraulic monitoring systems and numerical simulations are potential solutions, the former struggles to balance the number of monitoring points with cost constraints to achieve comprehensive and economically feasible measurements, and the latter requires clear boundary conditions and key parameters that often pose challenges in practical scenarios. This paper presents a Physics-Informed Neural Network (PINN)-based method applied to predicting hydraulic transients in open channels, incorporating sparse monitoring data and physical laws.

View Article and Find Full Text PDF

Understanding the metabolic adaptations of cancer cells is crucial for uncovering potential therapeutic targets and improving treatment strategies. In this study, we present a hybrid modeling framework that combines Physics-Informed Neural Networks (PINNs) and Universal PINNs (UPINNs) to investigate glucose-lactate metabolism in glioblastoma cell lines. We first employed PINNs to infer critical model parameters governing glucose uptake and phenotypic switching in tumor cells, demonstrating high accuracy using synthetic data.

View Article and Find Full Text PDF

Computational modeling of drug-eluting balloons in peripheral artery disease: Mechanisms, optimization, and translational insights.

Comput Struct Biotechnol J

August 2025

Unit of Medical Technology and Intelligent Information Systems, Dept. of Materials Science and Engineering, University of Ioannina, Ioannina GR45110, Greece.

Drug-eluting balloons (DEBs) represent a promising alternative to stent-based interventions for peripheral artery disease (PAD), and their therapeutic efficacy is dependent on optimizing drug transfer, mechanical deployment, and vessel-wall interactions. This review synthesizes current advancements in computational modeling; systematically analyzes studies identified through comprehensive ScienceDirect, Scopus, and PubMed (2015-2025) searches; and selects them according to PRISMA guidelines. Key strategies, including computational fluid dynamics (CFD), finite element analysis (FEA), fluid-structure interaction (FSI), and machine learning (ML), are critically examined to elucidate how drug kinetics, coating stability, and mechanical stress govern therapeutic outcomes.

View Article and Find Full Text PDF