电介质
材料科学
波导管
无线电频率
包层(金属加工)
光电子学
计算机科学
电信
冶金
作者
S. Ummethala,J. N. Kemal,Ahmed Shariful Alam,M. Lauermann,Artem Kuzmin,Y. Kutuvantavida,Sree Harsha Nandam,L. Hahn,Delwin L. Elder,Larry R. Dalton,Thomas Zwick,Sebastian Randel,W. Freude,C. Koos
出处
期刊:Optica
[Optica Publishing Group]
日期:2021-02-11
卷期号:8 (4): 511-511
被引量:48
标识
DOI:10.1364/optica.411161
摘要
Electro-optic (EO) modulators rely on the interaction of optical and electrical signals with second-order nonlinear media. For the optical signal, this interaction can be strongly enhanced using dielectric slot–waveguide structures that exploit a field discontinuity at the interface between a high-index waveguide core and the low-index EO cladding. In contrast to this, the electrical signal is usually applied through conductive regions in the direct vicinity of the optical waveguide. To avoid excessive optical loss, the conductivity of these regions is maintained at a moderate level, thus leading to inherent RC limitations of the modulation bandwidth. In this paper, we show that these limitations can be overcome by extending the slot–waveguide concept to the modulating radio-frequency (RF) signal. Our device combines an RF slotline that relies on B a T i O 3 as a high-k dielectric material with a conventional silicon photonic slot waveguide and a highly efficient organic EO cladding material. In a proof-of-concept experiment, we demonstrate a 1 mm long Mach–Zehnder modulator that offers a 3 dB bandwidth of 76 GHz and a 6 dB bandwidth of 110 GHz along with a small π voltage of 1.3 V ( U π L = 1.3 V m m ). We further demonstrate the viability of the device in a data-transmission experiment using four-state pulse-amplitude modulation (PAM4) at line rates up to 200 Gbit/s. Our first-generation devices leave vast room for further improvement and may open an attractive route towards highly efficient silicon photonic modulators that combine sub-1 mm device lengths with sub-1 V drive voltages and modulation bandwidths of more than 100 GHz.
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