Machine learning optimises infrared heating for sensors
The ability to develop inexpensive, efficient, designer infrared light sources could revolutionize molecular sensing technologies. Additional applications include free-space communications, infrared beacons for search and rescue, molecular sensors for monitoring industrial gases, environmental pollutants and toxins.
A research team at Vanderbilt and Penn State uses simple thin-film deposition, one of the most mature nano-fabrication techniques, aided by key advances in materials and machine learning.
Most thermal emitters with a custom spectral output have required patterned nanostructures fabricated with high-cost, low-throughput methods. Instead, the research team led by Joshua Caldwell, Vanderbilt associate professor of mechanical engineering, and Jon-Paul Maria, professor of materials science and engineering at Penn State, uses cadmium oxide in concert with a one-dimensional photonic crystal fabricated with alternating layers of dielectrics referred to as a distributed Bragg reflector.
The combination of these multiple layers of materials gives rise to a so-called “Tamm-polariton,” where the emission wavelength of the device is dictated by the interactions between these layers. Until now, such designs were limited to a single designed wavelength output. But creating multiple resonances at multiple frequencies with user-controlled wavelength, linewidth, and intensity is imperative for matching the absorption spectra of most molecules.
Material design has been challenging and computationally intense. Because advanced applications require functionality at multiple resonances, the new process had to drastically shorten design time. A typical device, for example, would contain tens to hundreds of designable parameters, creating high customization demands requiring unrealistic computation times. For instance, in a scenario that independently optimizes nine parameters, sampling 10 points per parameter, the simulations would take 15 days assuming 100 simulations each second. Yet, with more parameters, the time increases exponentially—11 and 12 parameters would require three and 31 years, respectively.
To address this challenge, PhD student Mingze He, lead author of the paper, proposed an inverse design algorithm that computes an optimized structure within minutes on a consumer-grade desktop. Further, this code could provide the ability to match the desired emission wavelength, linewidth, and amplitude of multiple resonances simultaneously over an arbitrary spectral bandwidth.
Another hurdle was identifying a semiconductor material that could allow a large dynamic range of electron densities. For this, the team used doped semiconductor material, developed by Maria’s research team at Penn State, that allows intentional design of optical properties.
“This allows the fabrication of advanced mid-infrared light sources at wafer-scale with very low cost and minimal fabrication steps,” he said.
This experimental section was conducted with Penn State collaborators while the devices were characterized by He and J. Ryan Nolen, a recent graduate of the Caldwell group. Together, the two teams successfully demonstrated the capability of inversely designed infrared light sources.
“The combination of the cadmium oxide material tunability with the fast optimization of aperiodic distributed Bragg reflectors offers the potential to design infrared light sources with user-defined output spectra. While these have immediate potential in chemical sensing, these also exhibit significant promise in a variety of other applications ranging for environmental and remoted sensing, spectroscopy, and infrared signaling and communications.” Caldwell said.
Significantly, the Caldwell group has open-sourced the design algorithm, which can be downloaded at the Caldwell Infrared Nanophotonic Materials and Devices laboratory website.
Their paper, “Deterministic inverse design of Tamm plasmon thermal emitters with multi-resonant control,” was published in Nature Materials.
Other articles on eeNews Europe
- White Rabbit deal boots timing synchronisation
- Photonic chips for QKD quantum security system
- Europe invests €227m directly in tech startups
- ARM launches virtual modelling toolchain to boost AIoT development
- Who is winning in 6G?
If you enjoyed this article, you will like the following ones: don't miss them by subscribing to :
eeNews on Google News