Back to Search Start Over

Neuromorphic Photonics Based on Phase Change Materials.

Authors :
Li, Tiantian
Li, Yijie
Wang, Yuteng
Liu, Yuxin
Liu, Yumeng
Wang, Zhan
Miao, Ruixia
Han, Dongdong
Hui, Zhanqiang
Li, Wei
Source :
Nanomaterials (2079-4991); Jun2023, Vol. 13 Issue 11, p1756, 14p
Publication Year :
2023

Abstract

Neuromorphic photonics devices based on phase change materials (PCMs) and silicon photonics technology have emerged as promising solutions for addressing the limitations of traditional spiking neural networks in terms of scalability, response delay, and energy consumption. In this review, we provide a comprehensive analysis of various PCMs used in neuromorphic devices, comparing their optical properties and discussing their applications. We explore materials such as GST (Ge<subscript>2</subscript>Sb<subscript>2</subscript>Te<subscript>5</subscript>), GeTe-Sb<subscript>2</subscript>Te<subscript>3</subscript>, GSST (Ge<subscript>2</subscript>Sb<subscript>2</subscript>Se<subscript>4</subscript>Te<subscript>1</subscript>), Sb<subscript>2</subscript>S<subscript>3</subscript>/Sb<subscript>2</subscript>Se<subscript>3</subscript>, Sc<subscript>0.2</subscript>Sb<subscript>2</subscript>Te<subscript>3</subscript> (SST), and In<subscript>2</subscript>Se<subscript>3</subscript>, highlighting their advantages and challenges in terms of erasure power consumption, response rate, material lifetime, and on-chip insertion loss. By investigating the integration of different PCMs with silicon-based optoelectronics, this review aims to identify potential breakthroughs in computational performance and scalability of photonic spiking neural networks. Further research and development are essential to optimize these materials and overcome their limitations, paving the way for more efficient and high-performance photonic neuromorphic devices in artificial intelligence and high-performance computing applications. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20794991
Volume :
13
Issue :
11
Database :
Complementary Index
Journal :
Nanomaterials (2079-4991)
Publication Type :
Academic Journal
Accession number :
164214461
Full Text :
https://doi.org/10.3390/nano13111756