Please use this identifier to cite or link to this item:
http://hdl.handle.net/10397/115506
| DC Field | Value | Language |
|---|---|---|
| dc.contributor | Department of Mechanical Engineering | en_US |
| dc.contributor | Mainland Development Office | en_US |
| dc.creator | Wang, W | en_US |
| dc.creator | Hakimzadeh, M | en_US |
| dc.creator | Ruan, H | en_US |
| dc.creator | Goswami, S | en_US |
| dc.date.accessioned | 2025-10-02T06:12:26Z | - |
| dc.date.available | 2025-10-02T06:12:26Z | - |
| dc.identifier.issn | 0045-7825 | en_US |
| dc.identifier.uri | http://hdl.handle.net/10397/115506 | - |
| dc.language.iso | en | en_US |
| dc.publisher | Elsevier | en_US |
| dc.subject | Time marching | en_US |
| dc.subject | Physics-informed neural operator | en_US |
| dc.subject | Hybrid solver | en_US |
| dc.subject | Domain decomposition | en_US |
| dc.title | Time-marching neural operator–FE coupling : AI-accelerated physics modeling | en_US |
| dc.type | Journal/Magazine Article | en_US |
| dc.identifier.volume | 446 | en_US |
| dc.identifier.doi | 10.1016/j.cma.2025.118319 | en_US |
| dcterms.abstract | Numerical solvers for partial differential equations (PDEs) often struggle to balance computational efficiency with accuracy, especially in multiscale and time-dependent systems. Neural operators offer a promising avenue to accelerate simulations, but their practical deployment is hindered by several challenges: they typically require large volumes of training data generated from high-fidelity solvers, tend to accumulate errors over time in dynamical settings, and often exhibit poor generalization in multiphysics scenarios. This work introduces a novel hybrid framework that integrates physics-informed deep operator network (PI-DeepONet) with finite element method (FEM) through domain decomposition and leverages numerical analysis for time marching. The core innovation lies in efficient coupling FEM and DeepONet subdomains via a Schwarz alternating method, expecting to solve complex and nonlinear regions by a pre-trained DeepONet, while the remainder is handled by conventional FEM. To address the challenges of dynamic systems, we embed the Newmark-Beta time-stepping scheme directly into the DeepONet architecture, substantially reducing long-term error propagation. Furthermore, an adaptive subdomain evolution strategy enables the ML-resolved region to expand dynamically, capturing emerging fine-scale features without remeshing. The framework's efficacy has been rigorously validated across a range of solid mechanics problems—spanning static, quasi-static, and dynamic regimes including linear elasticity, hyperelasticity, and elastodynamics—demonstrating accelerated convergence rates (up to 20 % improvement in convergence rates compared to conventional FE coupling approaches) while preserving solution fidelity with error margins consistently below 3 %. Our extensive case studies demonstrate that our proposed hybrid solver: (1) reduces computational costs by eliminating fine mesh requirements, (2) mitigates error accumulation in time-dependent simulations, and (3) enables automatic adaptation to evolving physical phenomena. This work establishes a new paradigm for coupling state-of-the-art physics-based and machine learning solvers in a unified framework—offering a robust, reliable, and scalable pathway for high-fidelity multiscale simulations. | en_US |
| dcterms.accessRights | embargoed access | en_US |
| dcterms.bibliographicCitation | Computer methods in applied mechanics and engineering, 1 Dec. 2025, v. 446, pt. B, 118319 | en_US |
| dcterms.isPartOf | Computer methods in applied mechanics and engineering | en_US |
| dcterms.issued | 2025-11-01 | - |
| dc.identifier.scopus | 2-s2.0-105013575240 | - |
| dc.identifier.artn | 118319 | en_US |
| dc.description.validate | 202510 bcwc | en_US |
| dc.description.oa | Not applicable | en_US |
| dc.identifier.SubFormID | G000175/2025-09 | - |
| dc.description.fundingSource | RGC | en_US |
| dc.description.fundingSource | Others | en_US |
| dc.description.fundingText | The authors (WW and HHR) would like to acknowledge the support by the Hong Kong General Research Fund (GRF) under Grant Numbers 15,213,619 and 15210622, and by an industry collaboration project (HKPolyU Project ID: P0039303). SG is supported by 2024 Johns Hopkins Discovery Award and National Science Foundation Grant Number 2438193 . The authors acknowledge the computational resources provided by the University Research Facility in Big Data Analytics (UBDA) at The Hong Kong Polytechnic University. The authors would like to acknowledge Dr. Yue Yu from Lehigh University for all the insighful discussions. | en_US |
| dc.description.pubStatus | Published | en_US |
| dc.date.embargo | 2027-11-01 | en_US |
| dc.description.oaCategory | Green (AAM) | en_US |
| Appears in Collections: | Journal/Magazine Article | |
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