发光二极管
钙钛矿(结构)
材料科学
光电子学
光子学
二极管
硅
硅光子学
带宽(计算)
调制(音乐)
数码产品
纳米技术
计算机科学
电信
电气工程
物理
化学
工程类
声学
结晶学
作者
Aobo Ren,Hao Wang,Linjie Dai,Junfei Xia,Xinyu Bai,Edward Butler‐Caddle,Joel A. Smith,Huagui Lai,Junzhi Ye,Xiang Li,Shijie Zhan,Chunhui Yao,Zewei Li,Mingchu Tang,Xueping Liu,J.X. Bi,Bowei Li,Kai Shen,Rui Chen,Han Yan
出处
期刊:Nature Photonics
[Nature Portfolio]
日期:2023-07-20
卷期号:17 (9): 798-805
被引量:22
标识
DOI:10.1038/s41566-023-01242-9
摘要
Light-emitting diodes (LEDs) are ubiquitous in modern society, with applications spanning from lighting and displays to medical diagnostics and data communications. Metal-halide perovskites are promising materials for LEDs because of their excellent optoelectronic properties and solution processability. Although research has progressed substantially in optimizing their external quantum efficiency, the modulation characteristics of perovskite LEDs remain unclear. Here we report a holistic approach for realizing fast perovskite photonic sources on silicon based on tailoring alkylammonium cations in perovskite systems. We reveal the recombination behaviour of charged species at various carrier density regimes relevant for their modulation performance. By integrating a Fabry–Pérot microcavity on silicon, we demonstrate perovskite devices with efficient light outcoupling. We achieve device modulation bandwidths of up to 42.6 MHz and data rates above 50 Mbps, with further analysis suggesting that the bandwidth may exceed gigahertz levels. The principles developed here will support the development of perovskite light sources for next-generation data-communication architectures. The demonstration of solution-processed perovskite emitters on silicon substrates also opens up the possibility of integration with micro-electronics platforms. Tailoring the composition of organic cations enables manipulating the recombination rates of perovskites. Optimized solution-processed perovskite emitters fabricated on silicon exhibit up to 42.6-MHz modulation bandwidth and 50-Mbps data rate.
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