| SPECIAL TOPIC — Biophysical circuits: Modeling & applications in neuroscience |
Prev
Next
|
|
|
Meminductor synaptic coupling in a heterogeneous HR-FHN neuron network: Model, dynamics, and DSP implementation |
| Yang Yin(尹扬) and Zhijun Li(李志军)† |
| School of Automation and Electronic Information, Xiangtan University, Xiangtan 411105, China |
|
|
|
|
Abstract To functionally emulate the history-dependent plasticity and electromagnetic induction effects inherent in biochemical synapses, this paper proposes a heterogeneous neural network model in which Hindmarsh–Rose (HR) neurons and FitzHugh–Nagumo (FHN) neurons are coupled via a synaptic connection composed of a meminductor in series with a resistor. This architecture explicitly decouples synaptic function: the linear resistor models the instantaneous conductive pathway, while the meminductor implements the history-dependent plastic pathway. The complex firing dynamics of the coupled system are systematically investigated through bifurcation diagrams, Lyapunov exponent spectra, phase portraits, and time-series analysis. The results show that variations in synaptic coupling strength and coupling resistance can induce transitions between diverse firing patterns, including chaotic spiking, periodic bursting, and alternations between periodic and chaotic states. Crucially, the meminductive synapse introduces activity-dependent multistability, manifested as the coexistence of multiple firing patterns determined by its initial internal state. Phase synchronization analysis further demonstrates that adjusting the coupling resistance provides an independent control mechanism that effectively enhances or suppresses synchronous firing between the two heterogeneous neurons, even at a fixed coupling strength. Finally, the physical feasibility of the system is validated through successful digital implementation on a digital signal processor (DSP) platform, as experimental measurements show excellent agreement with numerical simulations. This study establishes the meminductor as a biomimetically grounded element for chemical synapse emulation and provides a dynamically rich, hardware-validated platform for neuromorphic computing and information processing.
|
Received: 15 January 2026
Revised: 20 March 2026
Accepted manuscript online: 25 March 2026
|
|
PACS:
|
05.45.-a
|
(Nonlinear dynamics and chaos)
|
| |
87.19.lg
|
(Synapses: chemical and electrical (gap junctions))
|
| |
87.19.lj
|
(Neuronal network dynamics)
|
| |
87.19.lm
|
(Synchronization in the nervous system)
|
|
| Fund: Project supported by the National Natural Science Foundations of China (Grant No. 62171401) and the Key Research Project of the Hunan Provincial Department of Education (Grant No. 25A0146). |
Corresponding Authors:
Zhijun Li
E-mail: lizhijun@xtu.edu.cn
|
Cite this article:
Yang Yin(尹扬) and Zhijun Li(李志军) Meminductor synaptic coupling in a heterogeneous HR-FHN neuron network: Model, dynamics, and DSP implementation 2026 Chin. Phys. B 35 060503
|
[1] Chua L 1971 IEEE Trans. Circuit Theory 18 507 [2] Strukov D B, Snider G S, Stewart D R, et al. 2008 Nature 453 80 [3] Tour J M and He T 2008 Nature 453 42 [4] Di Ventra M, Pershin Y V and Chua L O 2009 Proc. IEEE 97 1717 [5] Duan L, Lu Q and Wang Q 2008 Neurocomputing 72 341 [6] Ma J 2023 J. Zhejiang Univ. Sci. A 24 109 [7] Hu B, Guan Z H, Chen G, et al. 2021 IEEE Trans. Cybern. 52 10214 [8] Mou J, Ma T, Banerjee S, et al. 2024 IEEE Trans. Circuits Syst. I Regul. Pap. 71 1771 [9] Pereda A E 2014 Nat. Rev. Neurosci. 15 250 [10] Yao Z, Sun K and He S 2023 Nonlinear Dyn. 111 19411 [11] Tian H, Wang J, Ma J, et al. 2025 Chaos Solitons Fractals 199 116863 [12] Xu F, Zhang J, Fang T, et al. 2018 Nonlinear Dyn. 92 1395 [13] Serb A, Corna A, George R, et al. 2020 Sci. Rep. 10 2590 [14] Qin M, Lai Q, Wang H, et al. 2025 Chaos 35 023123 [15] Boya B F B A, Babenko L K, Rangel-Magdaleno J D J, et al. 2025 Neural Netw. 196 108333 [16] Yang F, Song X and Yu Z 2024 Chaos Solitons Fractals 188 115496 [17] Yu H, Wang J, Du J, et al. 2015 Cogn. Neurodyn. 9 93 [18] Anderson P A 1985 J. Neurophysiol. 53 821 [19] Yao Z, Wang C, Zhou P, et al. 2021 Commun. Nonlinear Sci. Numer. Simul. 95 105583 [20] Liu Z, Zhou S, Zhu R, et al. 2025 Chaos Solitons Fractals 191 115918 [21] Li Z, Xue W, Xu Q, et al. 2025 Chaos Solitons Fractals 197 116545 [22] Yao Z, Ma J, Yao Y, et al. 2019 Nonlinear Dyn. 96 205 [23] Wu F, Guo Y and Ma J 2022 Nonlinear Dyn. 109 2063 [24] Yao Z, Sun K and He S 2023 Nonlinear Dyn. 111 19411 [25] Chen S, Zhang T, Tappertzhofen S, et al. 2023 Adv. Mater. 35 2301924 [26] Lee Y and Lee T W 2019 Acc. Chem. Res. 52 964 [27] Wang F Z 2023 Micromachines 14 486 [28] Dinavahi A, Yamamoto A and Harris H R 2023 Sci. Rep. 13 1817 [29] Li C, Zhang X, Chen P, et al. 2023 iScience 26 106315 [30] Zhang J, Yang L, Zuo J, et al. 2025 Chaos Solitons Fractals 199 116662 [31] Ding X, Fan W, Wang N, et al. 2025 Chaos Solitons Fractals 199 116658 [32] Shi F, Cao Y, Banerjee S, et al. 2024 Chaos Solitons Fractals 189 115723 [33] Yan X, Li Z and Li C 2024 Chin. Phys. B 33 028705 [34] Ma M, Xiong K, Li Z, et al. 2024 Chin. Phys. B 33 028706 [35] Mou J, Cao H, Zhou N, et al. 2024 IEEE Trans. Cybern. 54 7333 [36] Cao H, Wang Y, Banerjee S, et al. 2024 Chaos Solitons Fractals 179 114466 [37] Ding D, Niu Y, Zhan H, et al. 2024 Chin. Phys. B 33 050503 |
| No Suggested Reading articles found! |
|
|
Viewed |
|
|
|
Full text
|
|
|
|
|
Abstract
|
|
|
|
|
Cited |
|
|
|
|
Altmetric
|
|
blogs
Facebook pages
Wikipedia page
Google+ users
|
Online attention
Altmetric calculates a score based on the online attention an article receives. Each coloured thread in the circle represents a different type of online attention. The number in the centre is the Altmetric score. Social media and mainstream news media are the main sources that calculate the score. Reference managers such as Mendeley are also tracked but do not contribute to the score. Older articles often score higher because they have had more time to get noticed. To account for this, Altmetric has included the context data for other articles of a similar age.
View more on Altmetrics
|
|
|