Pretražite po imenu i prezimenu autora, mentora, urednika, prevoditelja

Napredna pretraga

Pregled bibliografske jedinice broj: 1278450

Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders


Verriere, Marc; Schunck, Nicolas; Kim, Irene; Marević, Petar; Quinlan, Kevin; Ngo, Michelle N.; Regnier, David; Lasseri, Raphael David
Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders // Frontiers in physics (Lausanne), 10 (2022), 1028370, 22 doi:10.3389/fphy.2022.1028370 (međunarodna recenzija, članak, znanstveni)


CROSBI ID: 1278450 Za ispravke kontaktirajte CROSBI podršku putem web obrasca

Naslov
Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders
(Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders)

Autori
Verriere, Marc ; Schunck, Nicolas ; Kim, Irene ; Marević, Petar ; Quinlan, Kevin ; Ngo, Michelle N. ; Regnier, David ; Lasseri, Raphael David

Izvornik
Frontiers in physics (Lausanne) (2296-424X) 10 (2022); 1028370, 22

Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni

Ključne riječi
nuclear density functional theory ; Gaussian process ; deep learning ; autoencoders ; resnet

Sažetak
From the lightest Hydrogen isotopes up to the recently synthesized Oganesson (Z = 118), it is estimated that as many as about 8, 000 atomic nuclei could exist in nature. Most of these nuclei are too short-lived to be occurring on Earth, but they play an essential role in astrophysical events such as supernova explosions or neutron star mergers that are presumed to be at the origin of most heavy elements in the Universe. Understanding the structure, reactions, and decays of nuclei across the entire chart of nuclides is an enormous challenge because of the experimental difficulties in measuring properties of interest in such fleeting objects and the theoretical and computational issues of simulating stronglyinteracting quantum many-body systems. Nuclear density functional theory (DFT) is a fully microscopic theoretical framework which has the potential of providing such a quantitatively accurate description of nuclear properties for every nucleus in the chart of nuclides. Thanks to highperformance computing facilities, it has already been successfully applied to predict nuclear masses, global patterns of radioactive decay like β or γ decay, and several aspects of the nuclear fission process such as, e.g., spontaneous fission half-lives. Yet, predictive simulations of nuclear spectroscopy—the low-lying excited states and transitions between them—or of nuclear fission, or the quantification of theoretical uncertainties and their propagation to basic or applied nuclear science applications, would require several orders of magnitude more calculations than currently possible. However, most of this computational effort would be spent into generating a suitable basis of DFT wavefunctions. Such a task could potentially be considerably accelerated by borrowing tools from the field of machine learning and artificial intelligence. In this paper, we review different approaches to applying supervised and unsupervised learning techniques to nuclear DFT.

Izvorni jezik
Engleski

Znanstvena područja
Fizika



POVEZANOST RADA


Ustanove:
Prirodoslovno-matematički fakultet, Zagreb

Profili:

Avatar Url Petar Marević (autor)

Poveznice na cjeloviti tekst rada:

doi www.frontiersin.org www.frontiersin.org

Citiraj ovu publikaciju:

Verriere, Marc; Schunck, Nicolas; Kim, Irene; Marević, Petar; Quinlan, Kevin; Ngo, Michelle N.; Regnier, David; Lasseri, Raphael David
Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders // Frontiers in physics (Lausanne), 10 (2022), 1028370, 22 doi:10.3389/fphy.2022.1028370 (međunarodna recenzija, članak, znanstveni)
Verriere, M., Schunck, N., Kim, I., Marević, P., Quinlan, K., Ngo, M., Regnier, D. & Lasseri, R. (2022) Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders. Frontiers in physics (Lausanne), 10, 1028370, 22 doi:10.3389/fphy.2022.1028370.
@article{article, author = {Verriere, Marc and Schunck, Nicolas and Kim, Irene and Marevi\'{c}, Petar and Quinlan, Kevin and Ngo, Michelle N. and Regnier, David and Lasseri, Raphael David}, year = {2022}, pages = {22}, DOI = {10.3389/fphy.2022.1028370}, chapter = {1028370}, keywords = {nuclear density functional theory, Gaussian process, deep learning, autoencoders, resnet}, journal = {Frontiers in physics (Lausanne)}, doi = {10.3389/fphy.2022.1028370}, volume = {10}, issn = {2296-424X}, title = {Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders}, keyword = {nuclear density functional theory, Gaussian process, deep learning, autoencoders, resnet}, chapternumber = {1028370} }
@article{article, author = {Verriere, Marc and Schunck, Nicolas and Kim, Irene and Marevi\'{c}, Petar and Quinlan, Kevin and Ngo, Michelle N. and Regnier, David and Lasseri, Raphael David}, year = {2022}, pages = {22}, DOI = {10.3389/fphy.2022.1028370}, chapter = {1028370}, keywords = {nuclear density functional theory, Gaussian process, deep learning, autoencoders, resnet}, journal = {Frontiers in physics (Lausanne)}, doi = {10.3389/fphy.2022.1028370}, volume = {10}, issn = {2296-424X}, title = {Building surrogate models of nuclear density functional theory with Gaussian processes and autoencoders}, keyword = {nuclear density functional theory, Gaussian process, deep learning, autoencoders, resnet}, chapternumber = {1028370} }

Časopis indeksira:


  • Current Contents Connect (CCC)
  • Web of Science Core Collection (WoSCC)
    • Science Citation Index Expanded (SCI-EXP)
    • SCI-EXP, SSCI i/ili A&HCI
  • Scopus


Citati:





    Contrast
    Increase Font
    Decrease Font
    Dyslexic Font