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Get Free AccessThe rate of spontaneous emission from an optical emitter can be greatly enhanced using a metallic optical antenna at the penalty of efficiency. In this paper we propose a metal-dielectric antenna that eliminates the tradeoff between spontaneous emission enhancement and radiative efficiency by using nanoscopic dielectric structures at the antenna tips. This tradeoff occurs due to Ohmic loss and is further exacerbated by electron surface collisions. We find that our metal-dielectric antenna can enhance spontaneous emission by a factor 5 × 10 5 with efficiency = 70%, greatly exceeding the radiative efficiency of a purely metallic antenna with similar enhancement. Moreover, the metal-dielectric antenna design strategy is naturally amenable to short-distance optical communications applications. We go on to discuss the Purcell effect within the context of antenna enhancement. Metallic optical antennas are best analyzed with conventional antenna circuit models, but if the Purcell enhancement were to be employed, we provide the effective mode volume, V eff = (3/4 π 2 ) 2 d 2 λ ( λ / l ) 5 , that would be needed.
Sean Hooten, Nicolas M. Andrade, Ming C. Wu, Eli Yablonovitch (2021). Efficient spontaneous emission by metal-dielectric antennas; antenna Purcell factor explained. , 29(14), DOI: https://doi.org/10.1364/oe.423754.
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Type
Article
Year
2021
Authors
4
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1364/oe.423754
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