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III–V/Si Hybrid MOS Optical Phase Shifter for Si Photonic Integrated Circuits

Authors :
Shigeki Takahashi
Shinichi Takagi
Shuhei Ohno
Jin-Kwon Park
Jae-Hoon Han
Qiang Li
Dongsheng Lyu
Frederic Boeuf
Mitsuru Takenaka
Chong Pei Ho
Junichi Fujikata
Source :
Journal of Lightwave Technology. 37:1474-1483
Publication Year :
2019
Publisher :
Institute of Electrical and Electronics Engineers (IEEE), 2019.

Abstract

We present a novel optical phase modulation scheme on a Si photonic platform that uses a III–V/Si hybrid metal–oxide–semiconductor (MOS) capacitor formed by bonding an n-type InGaAsP membrane on a p-type Si waveguide. We numerically revealed that the phase modulation efficiency was improved by a factor of 7–8 owing to electron accumulation at the InGaAsP MOS interface when the n-type Si layer in a Si MOS optical phase shifter was replaced by an n-type InGaAsP layer. To realize the III–V/Si hybrid MOS capacitor, we developed an Al2O3 bonding interface deposited by atomic layer deposition that enabled a low interface trap density of μ m wavelength owing to the electron-induced change in the refractive index of InGaAsP. Since no holes were induced in the III–V layer of the III–V/Si hybrid MOS capacitor, we avoided large hole-induced absorption in InGaAsP. As a result, when we had a π phase shift, we obtained optical absorption of 0.23 dB, approximately ten times smaller than that of a Si MOS optical phase shifter. We found by numerical analysis that the efficient low-loss III–V/Si hybrid MOS optical phase shifter improved markedly the optical modulation amplitude, indicating its suitability for high-speed modulation beyond 100 Gb/s. We also demonstrated a Mach–Zehnder interferometer optical switch using the proposed optical phase shifter with a switching time of less than 20 ns. We achieved an extremely low switching power of approximately 1 nW, enabling a large-scale optical switch and universal photonic integrated circuits. We also discuss the feasibility of a photonic neural network for deep learning.

Details

ISSN :
15582213 and 07338724
Volume :
37
Database :
OpenAIRE
Journal :
Journal of Lightwave Technology
Accession number :
edsair.doi...........f1b5bd8a9e5d16f29618abe0fa6884f3
Full Text :
https://doi.org/10.1109/jlt.2019.2892752