Deutsch
 
Hilfe Datenschutzhinweis Impressum
  DetailsucheBrowse

Datensatz

 
 
DownloadE-Mail
  Investigation of inverse design of multilayer thin-films with conditional invertible Neural Networks

Luce, A., Mahdavi, A., Wankerl, H., & Marquardt, F. (2022). Investigation of inverse design of multilayer thin-films with conditional invertible Neural Networks. arXiv, 2210.04629.

Item is

Basisdaten

einblenden: ausblenden:
Genre: Forschungspapier

Dateien

einblenden: Dateien
ausblenden: Dateien
:
2210.04629.pdf (beliebiger Volltext), 2MB
Name:
2210.04629.pdf
Beschreibung:
File downloaded from arXiv at 2022-10-11 09:52
OA-Status:
Keine Angabe
Sichtbarkeit:
Öffentlich
MIME-Typ / Prüfsumme:
application/pdf / [MD5]
Technische Metadaten:
Copyright Datum:
-
Copyright Info:
-
:
Screenshot 2022-10-11 at 09.58.59.png (Ergänzendes Material), 7KB
Name:
Screenshot 2022-10-11 at 09.58.59.png
Beschreibung:
-
OA-Status:
Keine Angabe
Sichtbarkeit:
Öffentlich
MIME-Typ / Prüfsumme:
image/png / [MD5]
Technische Metadaten:
Copyright Datum:
-
Copyright Info:
-
Lizenz:
-

Externe Referenzen

einblenden:

Urheber

einblenden:
ausblenden:
 Urheber:
Luce, Alexander1, 2, Autor
Mahdavi, Ali2, Autor
Wankerl, Heribert2, Autor
Marquardt, Florian3, Autor
Affiliations:
1FAU Erlangen-Nürnberg, ou_persistent22              
2Osram Regensburg, ou_persistent22              
3Marquardt Division, Max Planck Institute for the Science of Light, Max Planck Society, Staudtstraße 2, 91058 Erlangen, DE, ou_2421700              

Inhalt

einblenden:
ausblenden:
Schlagwörter: Physics, Computational Physics, physics.comp-ph,Computer Science, Learning, cs.LG
 Zusammenfassung: The task of designing optical multilayer thin-films regarding a given target is currently solved using gradient-based optimization in conjunction with methods that can introduce additional thin-film layers. Recently, Deep Learning and Reinforcement Learning have been been introduced to the task of designing thin-films with great success, however a trained network is usually only able to become proficient for a single target and must be retrained if the optical
targets are varied. In this work, we apply conditional Invertible Neural Networks (cINN) to inversely designing multilayer thin-films given an optical target. Since the cINN learns the energy landscape of all thin-film configurations within the training dataset, we show that cINNs can generate a stochastic ensemble of proposals for thin-film configurations that that are reasonably close to the desired target depending only on random variables. By refining the proposed configurations further by a local optimization, we show that the generated thin-films reach the target with significantly greater precision than comparable state-of-the art approaches. Furthermore, we tested the generative capabilities on samples which are outside the training data distribution and found that the cINN was able to predict thin-films for
out-of-distribution targets, too. The results suggest that in order to improve the generative design of thin-films, it is instructive to use established and new machine learning methods in conjunction in order to obtain the most
favorable results.

Details

einblenden:
ausblenden:
Sprache(n):
 Datum: 2022-10-10
 Publikationsstatus: Online veröffentlicht
 Seiten: -
 Ort, Verlag, Ausgabe: -
 Inhaltsverzeichnis: -
 Art der Begutachtung: -
 Identifikatoren: arXiv: 2210.04629
 Art des Abschluß: -

Veranstaltung

einblenden:

Entscheidung

einblenden:

Projektinformation

einblenden:

Quelle 1

einblenden:
ausblenden:
Titel: arXiv
Genre der Quelle: Kommentar
 Urheber:
Affiliations:
Ort, Verlag, Ausgabe: -
Seiten: - Band / Heft: - Artikelnummer: 2210.04629 Start- / Endseite: - Identifikator: -