作者单位
摘要
1 电子科技大学光电科学与工程学院,四川 成都 611731
2 济宁科力光电产业有限责任公司,山东 济宁 272113
从非连续介质波导构造的光子双势垒模型出发,建立了光子的双势垒量子贯穿理论,给出了光子穿透双势垒的量子概率公式。同时从解析和数值仿真两个角度分别讨论了行波光子和隐失波光子产生共振穿透效应所需的物理条件,研究了光子穿透概率与双势垒的几何尺寸、波导填充介质的折射率以及光子频率之间的依赖关系。比较不同物理条件下的仿真曲线,概括其物理规律。尤为重要的是,当双势垒由截止波导构成时,频率或双势垒结构参数发生细微变化会对光子穿透概率产生极大的影响。基于这些物理规律,初步探讨了光子的量子共振隧穿效应在一些光学器件设计中的潜在应用,重点研究了其在激光测距技术中的原理设计。
量子光学 电磁波导 量子隧穿 光子双势垒 共振穿透 激光测距 
光学学报
2024, 44(8): 0827001
Author Affiliations
Abstract
School of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China
We propose and numerically demonstrate a photonic computing primitive designed for integrated spiking neural networks (SNNs) based on add-drop ring microresonators (ADRMRs) and electrically reconfigurable phase-change material (PCM) photonic switches. In this neuromorphic system, the passive silicon-based ADRMR, equipped with a power-tunable auxiliary light, effectively demonstrates nonlinearity-induced dual neural dynamics encompassing spiking response and synaptic plasticity that can generate single-wavelength optical neural spikes with synaptic weight. By cascading these ADRMRs with different resonant wavelengths, weighted multiple-wavelength spikes can be feasibly output from the ADRMR-based hardware arrays when external wavelength-addressable optical pulses are injected; subsequently, the cumulative power of these weighted output spikes is utilized to ascertain the activation status of the reconfigurable PCM photonic switches. Moreover, the reconfigurable mechanism driving the interconversion of the PCMs between the resonant-bonded crystalline states and the covalent-bonded amorphous states is achieved through precise thermal modulation. Drawing from the thermal properties, an innovative thermodynamic leaky integrate-and-firing (TLIF) neuron system is proposed. With the TLIF neuron system as the fundamental unit, a fully connected SNN is constructed to complete a classic deep learning task: the recognition of handwritten digit patterns. The simulation results reveal that the exemplary SNN can effectively recognize 10 numbers directly in the optical domain by employing the surrogate gradient algorithm. The theoretical verification of our architecture paves a whole new path for integrated photonic SNNs, with the potential to advance the field of neuromorphic photonic systems and enable more efficient spiking information processing.
Photonics Research
2024, 12(4): 755

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