New! Sign up for our free email newsletter.
Science News
from research organizations

Machine learning helps improve photonic applications

Date:
September 28, 2018
Source:
Helmholtz-Zentrum Berlin für Materialien und Energie
Summary:
Photonic nanostructures can be used for many applications, not just in solar cells, but also in optical sensors for cancer markers or other biomolecules, for example. Researchers using computer simulations and machine learning have now shown how the design of such nanostructures can be selectively optimized.
Share:
FULL STORY

Nanostructures can increase the sensitivity of optical sensors enormously -- provided that the geometry meets certain conditions and matches the wavelength of the incident light. This is because the electromagnetic field of light can be greatly amplified or reduced by the local nanostructure. The HZB Young Investigator Group "Nano-SIPPE" headed by Prof. Christiane Becker is working to develop these kinds of nanostructures. Computer simulations are an important tool for this. Dr. Carlo Barth from the Nano-SIPPE team has now identified the most important patterns of field distribution in a nanostructure using machine learning, and has thereby explained the experimental findings very well for the first time.

Quantum dots on nanostructures

The photonic nanostructures examined in this paper consist of a silicon layer with a regular hole pattern coated with what are referred to as quantum dots made of lead sulphide. Excited with a laser, the quantum dots close to local field amplifications emit much more light than on an unordered surface. This makes it possible to empirically demonstrate how the laser light interacts with the nanostructure.

Ten different patterns discovered by machine learning

In order to systematically record what happens when individual parameters of the nanostructure change, Barth calculates the three-dimensional electric field distribution for each parameter set using software developed at the Zuse Institute Berlin. Barth then had these enormous amounts of data analyzed by other computer programs based on machine learning. "The computer has searched through the approximately 45,000 data records and grouped them into about ten different patterns," he explains. Finally, Barth and Becker succeeded in identifying three basic patterns among them in which the fields are amplified in various specific areas of the nanoholes.

Outlook: Detection of single molecules, e.g. cancer markers

This allows photonic crystal membranes based on excitation amplification to be optimised for virtually any application. This is because some biomolecules accumulate preferentially along the hole edges, for example, while others prefer the plateaus between the holes, depending on the application. With the correct geometry and the right excitation by light, the maximum electric field amplification can be generated exactly at the attachment sites of the desired molecules. This would increase the sensitivity of optical sensors for cancer markers to the level of individual molecules, for example.


Story Source:

Materials provided by Helmholtz-Zentrum Berlin für Materialien und Energie. Note: Content may be edited for style and length.


Journal Reference:

  1. Carlo Barth, Christiane Becker. Machine learning classification for field distributions of photonic modes. Communications Physics, 2018; 1 (1) DOI: 10.1038/s42005-018-0060-1

Cite This Page:

Helmholtz-Zentrum Berlin für Materialien und Energie. "Machine learning helps improve photonic applications." ScienceDaily. ScienceDaily, 28 September 2018. <www.sciencedaily.com/releases/2018/09/180928104517.htm>.
Helmholtz-Zentrum Berlin für Materialien und Energie. (2018, September 28). Machine learning helps improve photonic applications. ScienceDaily. Retrieved March 28, 2024 from www.sciencedaily.com/releases/2018/09/180928104517.htm
Helmholtz-Zentrum Berlin für Materialien und Energie. "Machine learning helps improve photonic applications." ScienceDaily. www.sciencedaily.com/releases/2018/09/180928104517.htm (accessed March 28, 2024).

Explore More

from ScienceDaily

RELATED STORIES