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  • 1
    Publication Date: 2012-11-01
    Print ISSN: 0955-2219
    Electronic ISSN: 1873-619X
    Topics: Mechanical Engineering, Materials Science, Production Engineering, Mining and Metallurgy, Traffic Engineering, Precision Mechanics
    Published by Elsevier
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  • 2
    Publication Date: 2016-05-04
    Electronic ISSN: 2213-7467
    Topics: Computer Science , Technology
    Published by Springer
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  • 3
    Publication Date: 2015-05-19
    Electronic ISSN: 2213-7467
    Topics: Computer Science , Technology
    Published by Springer
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  • 4
    Publication Date: 2020-04-06
    Electronic ISSN: 2213-7467
    Topics: Computer Science , Technology
    Published by Springer
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  • 5
    Publication Date: 2012-06-01
    Print ISSN: 0045-7825
    Electronic ISSN: 1879-2138
    Topics: Mechanical Engineering, Materials Science, Production Engineering, Mining and Metallurgy, Traffic Engineering, Precision Mechanics , Technology
    Published by Elsevier
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  • 6
    Publication Date: 2018-12-02
    Description: In this paper, computer vision enables recommending a reduced order model for fast stress prediction according to various possible loading environments. This approach is applied on a macroscopic part by using a digital image of a mechanical test. We propose a hybrid approach that simultaneously exploits a data-driven model and a physics-based model, in mechanics of materials. During a machine learning stage, a classification of possible reduced order models is obtained through a clustering of loading environments by using simulation data. The recognition of the suitable reduced order model is performed via a convolutional neural network (CNN) applied to a digital image of the mechanical test. The CNN recommend a convenient mechanical model available in a dictionary of reduced order models. The output of the convolutional neural network being a model, an error estimator, is proposed to assess the accuracy of this output. This article details simple algorithmic choices that allowed a realistic mechanical modeling via computer vision.
    Print ISSN: 1076-2787
    Electronic ISSN: 1099-0526
    Topics: Computer Science , Mathematics
    Published by Hindawi
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  • 7
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    MDPI - Multidisciplinary Digital Publishing Institute
    Publication Date: 2024-04-11
    Description: The use of machine learning in mechanics is booming. Algorithms inspired by developments in the field of artificial intelligence today cover increasingly varied fields of application. This book illustrates recent results on coupling machine learning with computational mechanics, particularly for the construction of surrogate models or reduced order models. The articles contained in this compilation were presented at the EUROMECH Colloquium 597, « Reduced Order Modeling in Mechanics of Materials », held in Bad Herrenalb, Germany, from August 28th to August 31th 2018. In this book, Artificial Neural Networks are coupled to physics-based models. The tensor format of simulation data is exploited in surrogate models or for data pruning. Various reduced order models are proposed via machine learning strategies applied to simulation data. Since reduced order models have specific approximation errors, error estimators are also proposed in this book. The proposed numerical examples are very close to engineering problems. The reader would find this book to be a useful reference in identifying progress in machine learning and reduced order modeling for computational mechanics.
    Keywords: TA1-2040 ; T1-995 ; supervised machine learning ; proper orthogonal decomposition (POD) ; PGD compression ; stabilization ; nonlinear reduced order model ; gappy POD ; symplectic model order reduction ; neural network ; snapshot proper orthogonal decomposition ; 3D reconstruction ; microstructure property linkage ; nonlinear material behaviour ; proper orthogonal decomposition ; reduced basis ; ECSW ; geometric nonlinearity ; POD ; model order reduction ; elasto-viscoplasticity ; sampling ; surrogate modeling ; model reduction ; enhanced POD ; archive ; modal analysis ; low-rank approximation ; computational homogenization ; artificial neural networks ; unsupervised machine learning ; large strain ; reduced-order model ; proper generalised decomposition (PGD) ; a priori enrichment ; elastoviscoplastic behavior ; error indicator ; computational homogenisation ; empirical cubature method ; nonlinear structural mechanics ; reduced integration domain ; model order reduction (MOR) ; structure preservation of symplecticity ; heterogeneous data ; reduced order modeling (ROM) ; parameter-dependent model ; data science ; Hencky strain ; dynamic extrapolation ; tensor-train decomposition ; hyper-reduction ; empirical cubature ; randomised SVD ; machine learning ; inverse problem plasticity ; proper symplectic decomposition (PSD) ; finite deformation ; Hamiltonian system ; DEIM ; GNAT ; thema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TB Technology: general issues::TBX History of engineering and technology
    Language: English
    Format: application/octet-stream
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  • 8
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    Springer Nature | Springer Nature Switzerland
    Publication Date: 2024-04-14
    Description: This Open Access book reviews recent theoretical and numerical developments in nonlinear model order reduction in continuum mechanics, being addressed to Master and PhD students, as well as to researchers, lecturers and instructors. The aim of the authors is to provide tools for a better understanding and implement reduced order models by using: physics-based models, synthetic data forecast by these models, experimental data and deep learning algorithms. The book involves a survey of key methods of model order reduction applied to model-based engineering and digital twining, by learning linear or nonlinear latent spaces. Projection-based reduced order models are the projection of mechanical equations on a latent space that have been learnt from both synthetic data and experimental data. Various descriptions and representations of structured data for model reduction are presented in the applications and survey chapters. Image-based digital twins are developed in a reduced setting. Reduced order models of as-manufactured components predict the mechanical effects of shape variations. A similar workflow is extended to multiphysics or coupled problems, with high dimensional input fields. Practical techniques are proposed for data augmentation and also for hyper-reduction, which is a key point to speed up projection-based model order reduction of finite element models. The book gives access to python libraries available on gitlab.com, which have been developed as part of the research program [FUI-25] MORDICUS funded by the French government. Similarly to deep learning for computer vision, deep learning for model order reduction circumvents the need to design parametric problems prior reducing models. Such an approach is highly relevant for image-base modelling or multiphysics modelling.
    Keywords: Computational Mechanics ; Data Augmentation ; Deep Learning ; Digital Twining ; Dimensionality Reduction ; GenericROM Library ; High-Fidelity Model ; Hyper-reduction ; Image-based Digital Twins ; Manifold Learning ; Model Order Reduction ; Mordicus ; Multiphysics Modeling ; thema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence::UYQM Machine learning ; thema EDItEUR::U Computing and Information Technology::UF Business applications::UFM Mathematical and statistical software ; thema EDItEUR::P Mathematics and Science::PB Mathematics::PBT Probability and statistics ; thema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TG Mechanical engineering and materials::TGM Materials science::TGMB Engineering thermodynamics ; thema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TG Mechanical engineering and materials::TGP Production and industrial engineering ; thema EDItEUR::P Mathematics and Science::PH Physics::PHU Mathematical physics ; thema EDItEUR::U Computing and Information Technology::UY Computer science::UYQ Artificial intelligence::UYQM Machine learning ; thema EDItEUR::U Computing and Information Technology::UF Business applications::UFM Mathematical and statistical software ; thema EDItEUR::P Mathematics and Science::PB Mathematics::PBT Probability and statistics ; thema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TG Mechanical engineering and materials::TGM Materials science::TGMB Engineering thermodynamics ; thema EDItEUR::T Technology, Engineering, Agriculture, Industrial processes::TG Mechanical engineering and materials::TGP Production and industrial engineering ; thema EDItEUR::P Mathematics and Science::PH Physics::PHU Mathematical physics
    Language: English
    Format: image/jpeg
    Format: image/jpeg
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