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Selective tuning of high-Q silicon photonic crystal nanocavities via laser-assisted local oxidation

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 نشر من قبل Charlton Chen
 تاريخ النشر 2011
  مجال البحث فيزياء
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We examine the cavity resonance tuning of high-Q silicon photonic crystal heterostructures by localized laser-assisted thermal oxidation using a 532 nm continuous wave laser focused to a 2.5 mm radius spot-size. The total shift is consistent with the parabolic rate law. A tuning range of up to 8.7 nm is achieved with ~ 30 mW laser powers. Over this tuning range, the cavity Q decreases from 3.2times10^5 to 1.2times10^5. Numerical simulations model the temperature distributions in the silicon photonic crystal membrane and the cavity resonance shift from oxidation.



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