- Photonics Research
- Vol. 10, Issue 4, 939 (2022)
Abstract
1. INTRODUCTION
Over the past few years, the rapid development of artificial intelligence has revolutionized many aspects of our lives, with applications ranging from image recognition [1] to cancer diagnosis [2]. Meanwhile, machine learning itself has also posed great challenges to the traditional von Neumann computing architecture due to the massively distributed information processing fashion [3]. Taking inspiration from the extraordinary computational capacities of human brains [4], neuromorphic computing has emerged as a promising candidate for the next generation intelligent computing paradigm. Currently available electronic neuromorphic systems, e.g., TrueNorth [5], Loihi [6], Neurogrid [7], and SpiNNaker [8], have demonstrated significant performance enhancement in both power efficiency and computing speed, but still face intrinsic bottlenecks in terms of reduced bandwidth, limited speed, and large multicasting [9]. Benefitting from the unique advantages of optical devices, e.g., high parallelism, broad bandwidth, low cross talk, and large integration, photonic neuromorphic systems are capable of, in theory, outperforming state-of-the-art neuromorphic electronics with several orders-of-magnitude faster operation speed as well as far less power consumption [10]. Since the pioneering work in the early 1990s [11,12], considerable efforts have been aimed at hardware implementations of photonic neurons, either realizing the nonlinear activation functions or emulating the all-or-none dynamic response [3,9,13]. Notably, spiking neurons can process information in a more biologically computational fashion by exploring the sparse coding strategy and event-driven nature of neural systems, thus rendering an energy-efficient computing system that combines both the noise robustness of digital computation and the bandwidth efficiency of analog communication [14]. The past decade has witnessed a bloom of diverse photonic spiking neurons. Due to the similar underlying excitability mechanisms with biological neurons [15], semiconductor lasers of different types have been the most widely employed approaches, including microrings [16], microdisks [17,18], micropillars [19,20], quantum dots [21–23], two sections with saturable absorber regions [24,25], distributed feedback lasers [26], and vertical-cavity surface-emitting lasers (VCSELs) [27–33]. There are also other novel photonic demonstrations of spiking neural models, e.g., semiconductor optical amplifiers (SOAs) [34], microring modulators [35], and microring resonators with phase change materials [36,37].
Although impressive performance has been numerically and experimentally demonstrated with the aforementioned schemes, the necessary use of active components leads to poor compatibility with the mutual complementary metal–oxide–semiconductor (CMOS) fabrication process, making it difficult for large-scale integrated photonic neuromorphic systems. In our previous work [38], we have theoretically analyzed the nonlinearity of passive microresonators in the silicon-on-insulator (SOI) platform, which can be utilized to realize the spiking dynamics of photonic neurons. Here, we further provide systematic experimental studies of a microring spiking neuron. The discontinuous relation between oscillation frequency and optical pump power of self-pulsation offers direct evidence that the silicon microring belongs to the class II resonate-and-fire spiking neuron, which is further confirmed by subthreshold oscillations and the existence of a thin threshold region of excitability. Moreover, the all-optical microring spiking neuron does not exhibit a typical refractory period by engineering the perturbation power much higher than the pump power. As a result, its operation speed is limited only by the excited pulse width and can reach up to approximately sub-gigahertz (GHz), much faster than prior work [39]. More importantly, we report the first experimental demonstration of temporal integration and inhibitory dynamics in passive microresonators, to the best of our knowledge. These novel spiking regimes may potentially pave the way toward large-scale photonic neural networks.
2. DESIGN OF ALL-OPTICAL SILICON SPIKING NEURON AND EXPERIMENTAL SETUP
Biological neurons are capable of exhibiting a rich diversity of spiking activities, the simplest of which can be categorized into two classes. Table 1 provides a detailed summary of the most important neurocomputational properties [4]. In general, integrators feature a well-defined firing threshold and all-or-none spiking dynamics. When the perturbation strength is below the threshold, no spikes can be observed, whereas spike events with relatively constant amplitude will be generated beyond a certain value. Furthermore, the firing rate of integrators can be flexibly tailored by adjusting the input strength, indicating a rate coding scheme. On the other side, resonators feature fast subthreshold amplitude oscillations and typically exhibit a threshold area. Within a certain power range, external stimuli can excite resonators to produce spike events with varying amplitudes, depending on the perturbation strength. Distinct from the cases of integrators, the firing rate of resonators is limited to a specific frequency band, which is determined by the subthreshold oscillations. Moreover, resonators are able to present frequency preferences by responding to perturbations that are weak but resonant with the nature subthreshold oscillation frequency. It should be noted that integrators are ideal candidates for neuromorphic information processing. Resonators, however, have also attracted much research interest and may find important applications in selective communication among different neuron groups [40]. In fact, there has been evidence of both integrators and resonators in human brains. Summary of Major Neurocomputational Properties [Properties Integrators Resonators Bifurcation Saddle-node on invariant circle Saddle-node Subcritical Andronov–Hopf Supercritical Andronov–Hopf Excitability Class I Class II Class II Bistability No Yes Yes No Threshold Well defined May not be defined Subthreshold oscillations No Yes All-or-none spiking Yes No Frequency preference No Yes
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There has been long-held research interest in the nonlinearity of microresonators to manipulate light with light. Due to the free carrier dispersion (FCD) effect, the free carriers generated by two-photon absorption (TPA) induce a blueshift to the resonance wavelength. Meanwhile, the absorbed optical energy by free carrier absorption (FCA) is mainly lost by heat, which leads to a redshift in the resonance wavelength owing to the thermo-optic (TO) effect. However, the relaxation process of heat is at least one order of magnitude slower than free carriers. As a result, the interplay between thermal and free carriers contributes to diverse nonlinearities in microresonators. To characterize this nonlinear process, we have proposed a universal coupled mode theory (CMT) model for all passive microresonators [38], which can output “negative” pulses when applying strong enough perturbations. Since information in spike processing is contained in the presence timing of spikes, regardless of their shapes, microresonators are still able to successfully emulate the spiking dynamics of photonic neurons, e.g., excitability, temporal integration, and inhibition. Moreover, the phase-plane analysis has revealed that the excitability of passive microresonators results from subcritical Andronov–Hopf bifurcation [39], indicating class II neural excitability. Although nonlinearities in a silicon microring have been extensively investigated in experiments [39,41,42], there has been little systematic research work concentrating on its characteristics from the perspective of a spiking neuron.
To fully explore the potential of a passive microring neuron, we have designed an all-pass silicon microring with a radius of 7 μm and a cross section of , thus ensuring single mode operation. The coupling gap between the bus waveguide and ring waveguide is 210 nm. The microring has been fabricated with a standard CMOS process in CUMEC (www.cumec.cn) within a multi-project wafer. The microscope image of the microring used in the experiment is shown in Fig. 1(a). The device characterization setup is given in the black box in Fig. 1(b). The measured non-normalized transmission spectra are schematically shown in Fig. 1(c), indicating a free spectrum range (FSR) of . As illustrated in Fig. 1(d), the microring has a resonance at 1548.471 nm with an extinction ratio of . The 3 dB bandwidth is about , corresponding to a quality factor (Q) of 62,000, which is high enough for the silicon ring to exhibit various spiking regimes [38].
Figure 1.(a) Microscope image of the silicon microring used in the experiment. (b) Schematic figure of the measurement setup for both characterization of the microring and investigation of its spiking dynamics. TLS, tunable laser source; PC, polarization controller; DUT, device under test; OSA, optical spectrum analyzer; CR, circulator; EDFA, erbium-doped fiber amplifier; BPF, bandpass filter; PD, photodetector; AWG, arbitrary waveform generator; OSC, oscilloscope; EOM, electro-optical modulator. (c) Non-normalized transmission of the microring. (d) Transmission of one single resonance and its Lorentz curve.
The experimental setup to further study the temporal dynamics of the silicon microring neuron is also presented in Fig. 1(b). The coupling loss between single mode fibers and grating couplers is optimized to be facet at 1550 nm. The pump light generated from a tunable continuous-wave (CW) laser source (Santec, TLS-770) is directly coupled into the bus waveguide of the designed microring after being polarized by a polarization controller (PC). To provide excitatory and inhibitory stimuli, the perturbation light is obtained by modulating another tunable laser source (Keysight, 81960A) with a high speed Mach–Zehnder modulator (Fujitsu, FTM7939EK). The modulation signals are programmed with a high speed arbitrary waveform generator (AWG) (Tektronix, AWG7122C). To compensate for optical link loss, two erbium-doped fiber amplifiers (EDFAs) are used to boost the input perturbation light and output light, which are separated with an optical circulator of high isolation ratio. Before being detected by a high speed photodetector (Finisar, XPDV2120R), the output of EDFA is connected to a tunable bandpass filter (DiCon, TF-1550-0.8-9/9LT-FC-1) centered at the wavelength of pump light to filter out perturbation pulses and noise. The detected optical signals together with a reference electric signal are then sent into an oscilloscope (Tektronix, DSO2014) to monitor real-time waveforms.
3. RESONATE-AND-FIRE MICRORING SPIKING NEURON
A. Self-Pulsation
Considering that silicon microrings are able to exhibit self-pulsation at both negative and positive detunings from their resonance wavelengths, in our experiments, we detune the wavelength of pump light at from the resonance at , and no perturbation light is applied. The measured output waveforms at different input powers of 1, 3, 5 dBm are shown in Fig. 2(a), where the period of self-pulsation gradually decreases with the increase of input power. As illustrated in Fig. 2(b), self-pulsation can be observed only when the optical pump power is above a certain value of 0.8 dBm. Otherwise, the output power will remain constant. It should be noted that this kind of discontinuity in the frequency–power relation reveals class II neural excitability. We also notice that the oscillation frequency can be modified only within a small range from 22 to 88 kHz, about two orders of magnitude lower than previous results [39,41]. Since a complete oscillation cycle requires the relaxation of both free carriers and temperature, the period of self-pulsation can be roughly determined by . Similar to results reported very recently [42], the sub-MHz oscillation in our case may be attributed to a relatively long thermal relaxation time.
Figure 2.(a) Measured real-time output waveform of self-pulsation for different input powers. (b) Frequency of self-pulsation in relation to pump power.
B. Excitability
To investigate the excitability behavior of a microring spiking neuron, the optical pump power is fixed at near the self-pulsation onset, and then we record the output signals in response to perturbation pulses of increasing power. The pump light is detuned at from the resonant wavelength at , while the perturbation light is detuned near another resonance wavelength at . The on-chip input power of the pump light and the perturbation light is estimated to be and lower due to the grating couplers, respectively. In the following experiments, the settings of pump light and perturbation signals stay the same unless stated specifically. Rectangular perturbation pulses with a time duration of 15 ns are generated by the AWG, and the data sequence repeats at a frequency of 5 MHz. As can be seen in Fig. 3(a), stable and obvious “negative” pulses can be observed when the optical power of perturbation light is above 6.9 dBm. It is worth mentioning that the time traces of output signals have been shifted to align with the reference electric signal. With the increase of perturbation power, the dip becomes deeper. To quantitatively analyze this process, we normalize the strength of “negative” spikes in relation to the deepest situation. As shown in Fig. 3(b), the normalized strength first increases almost linearly when is below 7.7 dBm. Then it goes through a sharp jump as increases from 7.7 dBm to 7.9 dBm. After that, the normalized strength experiences a slow increase once again and almost stabilizes as a constant when is above 8.3 dBm. The trend agrees quite well with our theoretical prediction [38]. We emphasize that the narrow threshold region for perturbation power from 7.7 dBm to 7.9 dBm, in combination with the subthreshold spikes of varying strengths, further confirms that the silicon microring functions as a class II resonate-and-fire neuron.
Figure 3.(a) Measured real-time output waveform of excitability in response to perturbation pulses of increasing power. (b) Normalized strength of the “negative” spike as a function of perturbation power. The threshold area is indicated by the shaded region.
The frequency detuning of the pump and perturbation light has little impact on the shape and power of microring neuron spikes. We first numerically study this with the CMT model [38], where the wavelengths of the pump and perturbation signals are set to be the same and detuned from the resonance with different values. For , , and , the perturbation light is strong enough to excite the microring neuron at , , and simultaneously. As shown in Fig. 4(a), the spikes of the microring neuron are almost the same in terms of the shape and power, and this is further verified by the experimental results. For and , we measure the output spikes under three different conditions (case 1: , ; case 2: , ; case 3: , ). As illustrated in Fig. 4(b), the power and shape of the microring neuron spikes remain roughly the same with slight variations.
Figure 4.(a) Simulated and (b) measured microring neuron spikes for different wavelength detuning values of the pump and perturbation light.
C. Refractory Period
There are two types of refractory periods in excitable systems: the absolute refractory period, during which excitations are completely inhibited, and the relative refractive period, during which subthreshold spikes can be excited. The refractory period allows the spiking neuron to relax to its steady state, hence enabling repeatable spiking. However, its existence also sets the maximum operation speed of spike processing. Although the refractory period in a silicon microring has already been theoretically predicted [38] and experimentally demonstrated [39], the power of the perturbation light is typically limited to be lower than that of the pump light. In fact, the excitability threshold distribution of the microring neuron can be divided into three parts, as shown in Fig. 5(a). In region I, the microring neuron can be excited with perturbation power below the pump power but above the threshold; in region II, the microring neuron can be excited only when the perturbation power is much higher than the pump power. The microring neuron exhibits self-pulsation in region III. Previous studies have mainly focused on region I, where the operation speed of the microring neuron is constrained by its refractory period. Here, we numerically demonstrate that the refractory period can be suppressed by increasing perturbation power. In the simulation, two perturbation pulses with a time interval of 80 ns are used to trigger the microring neuron. As shown in Fig. 5(b), for and in region I, when perturbation power is , the microring does not respond to the second perturbation pulse, thus exhibiting a typical refractory period. However, the microring can be excited again after the first excitation when perturbation power is increased to be higher than the pump power of . Configuring the perturbation power above the pump power can significantly relax the excitation requirements for the microring spiking neuron. For and in region II, the microring remains silent when perturbation power is the same as the pump power of , but is successfully excited by the two perturbation pulses of , as illustrated in Fig. 5(c). We further experimentally validate this feature by changing the time duration between two perturbation pulses of , each of which is strong enough to trigger a complete excitation. In this case, the microring neuron is working in region II, and the on-chip perturbation power is estimated to be higher than the pump power. As shown in Fig. 6, the second perturbation pulse can always excite a complete output spike with increasing time intervals of 20 ns, 50 ns, and 80 ns, which indicates the refractory period has been successfully suppressed. It should be noted that the absence of a typical refractory period allows the microring neuron to operate with an infinite speed in theory, which is constrained to nearly sub-GHz by the excited pulse width in practice.
Figure 5.(a) Distribution of the excitability threshold for the microring neuron over different pump powers and wavelength detuning. (b) For
Figure 6.Measured real-time output waveform of refractory period with varying time intervals between two perturbation pulses. Each pulse is strong enough to excite the silicon microring neuron to emit a complete spike.
D. Temporal Integration
Temporal integration of a spiking neuron refers to the ability to integrate several closely spaced stimuli in time, and produce a complete output spike once the accumulated potential exceeds the excitability threshold. This property can be exploited to perform coincidence detection, which is the fundamental process in various spatial–temporal recognition tasks. To investigate this feature of the silicon microring neuron, we program a perturbation pattern consisting of a single rectangular pulse followed by two closely spaced pulses with varying time intervals. Each individual perturbation pulse is below the excitation threshold and yields only a subthreshold oscillation. As demonstrated in Fig. 7, two pulses with a center-to-center time duration of 18 ns can trigger a subthreshold spike with strength similar to a single pulse. When the time interval between two pulses shrinks to 10 ns, a deeper output spike can be excited with improved strength compared to a single pulse. Leaky integration is indicated by the recovery process between two dips. If the temporal separation further decreases to 5 ns, a single complete output spike with significant strength enhancement is produced on the arrival of two perturbation pulses. Obviously, the microring spiking neuron is able to exhibit temporal integration of multiple external stimuli.
Figure 7.Measured real-time output waveform of temporal integration with varying time intervals between two perturbation pulses. Only a subthreshold spike can be triggered by each single pulse.
E. Inhibitory Dynamics
Both excitatory and inhibitory dynamics play important roles in spike-time-dependent plasticity (STDP) [43], which offers an efficient learning mechanism for forming and modifying neuromorphic computing systems. Previously, inhibition has been experimentally demonstrated in VCSELs [25,29,31], a quantum-dot mode-locked laser [21], and a microring modulator neuron [35], but remains unexplored in the research field of passive microresonators. The experimental results of controllable inhibitory dynamics in a microring are shown in Fig. 8. We program the AWG to obtain a 15 ns excitatory pattern with a high level of 2.2 and a 15 ns inhibitory pattern with a low level of . The power level of perturbation light is 0.4 at the steady state. It is clear that the excited output spikes are gradually suppressed to almost null as the inhibitory patterns move toward excitatory patterns from 25 ns to 0 ns, while the output spikes recover to their normal shapes immediately as the inhibitory patterns move behind to excitatory patterns of 3 ns. Notably, it is the first experimental observation of inhibition in a passive microring.
Figure 8.Measured real-time output waveform of inhibitory dynamics with varying time intervals between the excitatory and inhibitory pattens.
4. CONCLUSION
In summary, we systematically investigate the fundamental spiking regimes of an all-optical microring neuron with both numerical and experimental results, i.e., self-pulsation, excitability, refractory period, temporal integration, and inhibitory dynamics. The fact that the passive microring behaves like a class II resonate-and-fire neuron has been verified by the discontinuous frequency–power relation of self-pulsation, subthreshold oscillations, and a narrow excitation threshold region. The refractory period of the microring neuron has been successfully suppressed by engineering perturbation power much higher than pump power, thus promising an operation speed up to roughly sub-GHz. Furthermore, temporal integration and inhibitory dynamics are experimentally demonstrated in a passive microresonator for the first time. Last but not least, our silicon microring spiking neuron is fully compatible with the standard CMOS process, thus paving the way for large-scale integrated spiking neural networks.
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