Abstract
Metastructures of titanium nitride (TiN), a plasmonic refractory material, can potentially achieve high solar absorptance while operating at elevated temperatures, but the design has been driven by expert intuition. Here, we design a high-performance solar absorber based on TiN metastructures using quantum computing-assisted optimization. The optimization scheme includes machine learning, quantum annealing, and optical simulation in an iterative cycle. It designs an optimal structure with solar absorptance > 95% within 40 h, much faster than an exhaustive search. Analysis of electric field distributions demonstrates that combined effects of Fabry-Perot interferences and surface plasmonic resonances contribute to the broadband high absorption efficiency of the optimally designed metastructure. The designed absorber may exhibit great potential for solar energy harvesting applications, and the optimization scheme can be applied to the design of other complex functional materials.
Original language | English |
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Pages (from-to) | 40606-40613 |
Number of pages | 8 |
Journal | ACS Applied Materials and Interfaces |
Volume | 15 |
Issue number | 34 |
DOIs | |
State | Published - Aug 30 2023 |
Externally published | Yes |
Funding
T.L. acknowledges the support from the National Science Foundation (grant Nos. 1937923 and 1949910). G.X. acknowledges the support from the University of Texas at Dallas startup fund and the National Science Foundation (grant Nos. 1937949 and 1949962).
Keywords
- machine learning
- metastructure
- quantum computing
- solar absorber
- thermophotovoltaic