| dc.contributor.author | Christensen, Thomas | |
| dc.contributor.author | Loh, Charlotte | |
| dc.contributor.author | Picek, Stjepan | |
| dc.contributor.author | Jakobović, Domagoj | |
| dc.contributor.author | Jing, Li | |
| dc.contributor.author | Fisher, Sophie | |
| dc.contributor.author | Ceperic, Vladimir | |
| dc.contributor.author | Joannopoulos, John D. | |
| dc.contributor.author | Soljačić, Marin | |
| dc.date.accessioned | 2022-05-23T20:31:34Z | |
| dc.date.available | 2021-09-20T18:22:31Z | |
| dc.date.available | 2022-05-23T20:31:34Z | |
| dc.date.issued | 2020-06 | |
| dc.date.submitted | 2020-03 | |
| dc.identifier.issn | 2192-8614 | |
| dc.identifier.issn | 2192-8606 | |
| dc.identifier.uri | https://hdl.handle.net/1721.1/132457.2 | |
| dc.description.abstract | © 2020 Thomas Christensen et al., published by De Gruyter, Berlin/Boston 2020. The prediction and design of photonic features have traditionally been guided by theory-driven computational methods, spanning a wide range of direct solvers and optimization techniques. Motivated by enormous advances in the field of machine learning, there has recently been a growing interest in developing complementary data-driven methods for photonics. Here, we demonstrate several predictive and generative data-driven approaches for the characterization and inverse design of photonic crystals. Concretely, we built a data set of 20,000 two-dimensional photonic crystal unit cells and their associated band structures, enabling the training of supervised learning models. Using these data set, we demonstrate a high-accuracy convolutional neural network for band structure prediction, with orders-of-magnitude speedup compared to conventional theory-driven solvers. Separately, we demonstrate an approach to high-throughput inverse design of photonic crystals via generative adversarial networks, with the design goal of substantial transverse-magnetic band gaps. Our work highlights photonic crystals as a natural application domain and test bed for the development of data-driven tools in photonics and the natural sciences. | en_US |
| dc.language.iso | en | |
| dc.publisher | Walter de Gruyter GmbH | en_US |
| dc.relation.isversionof | http://dx.doi.org/10.1515/nanoph-2020-0197 | en_US |
| dc.rights | Creative Commons Attribution 4.0 International license | en_US |
| dc.rights.uri | https://creativecommons.org/licenses/by/4.0/ | en_US |
| dc.source | De Gruyter | en_US |
| dc.title | Predictive and generative machine learning models for photonic crystals | en_US |
| dc.type | Article | en_US |
| dc.contributor.department | Massachusetts Institute of Technology. Department of Physics | |
| dc.contributor.department | Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science | |
| dc.relation.journal | Nanophotonics | en_US |
| dc.eprint.version | Final published version | en_US |
| dc.type.uri | http://purl.org/eprint/type/JournalArticle | en_US |
| eprint.status | http://purl.org/eprint/status/PeerReviewed | en_US |
| dc.date.updated | 2020-10-30T18:44:26Z | |
| dspace.orderedauthors | Christensen, T; Loh, C; Picek, S; Jakobović, D; Jing, L; Fisher, S; Ceperic, V; Joannopoulos, JD; Soljačić, M | en_US |
| dspace.date.submission | 2020-10-30T18:44:33Z | |
| mit.journal.volume | 9 | en_US |
| mit.journal.issue | 13 | en_US |
| mit.license | PUBLISHER_CC | |
| mit.metadata.status | Authority Work Needed | en_US |