Topology identification and dynamical pattern recognition for Hindmarsh–Rose neuron model via deterministic learning

被引:0
作者
Danfeng Chen
Junsheng Li
Wei Zeng
Jun He
机构
[1] Foshan University,School of Mechatronic Engineering and Automation
[2] Longyan University,School of Physics and Mechanical and Electrical Engineering
来源
Cognitive Neurodynamics | 2023年 / 17卷
关键词
Hindmarsh–Rose neural network; Topology identification; Deterministic learning; Neuronal synchronization; Pattern recognition;
D O I
暂无
中图分类号
学科分类号
摘要
Studies have shown that Parkinson’s, epilepsy and other brain deficits are closely related to the ability of neurons to synchronize with their neighbors. Therefore, the neurobiological mechanism and synchronization behavior of neurons has attracted much attention in recent years. In this contribution, it is numerically investigated the complex nonlinear behaviour of the Hindmarsh–Rose neuron system through the time responses, system bifurcation diagram and Lyapunov exponent under different system parameters. The system presents different and complex dynamic behaviors with the variation of parameter. Then, the identification of the nonlinear dynamics and topologies of the Hindmarsh–Rose neural networks under unknown dynamical environment is discussed. By using the deterministic learning algorithm, the unknown dynamics and topologies of the Hindmarsh–Rose system are locally accurately identified. Additionally, the identified system dynamics can be stored and represented in the form of constant neural networks due to the convergence of system parameters. Finally, based on the time-invariant representation of system dynamics, a fast dynamical pattern recognition method via system synchronization is constructed. The achievements of this work will provide more incentives and possibilities for biological experiments and medical treatment as well as other related clinical researches, such as the quantifying and explaining of neurobiological mechanism, early diagnosis, classification and control (treatment) of neurologic diseases, such as Parkinson’s and epilepsy. Simulations are included to verify the effectiveness of the proposed method.
引用
收藏
页码:203 / 220
页数:17
相关论文
共 86 条
[1]  
Cao J(2006)Adaptive synchronization of neural networks with or without time-varying delay Chaos 16 1-7
[2]  
Lu J(2016)Complex dynamical networks Contr Synch Pattern Comput Netw 5 15-29
[3]  
Chen G(2014)Distributed cooperative adaptive identification and control for a group of continuous-time systems with a cooperative PE condition via consensus IEEE Trans Autom Control 59 91-106
[4]  
Chen WS(2016)Modeling of nonlinear dynamical systems based on deterministic learning and structural stability Sci China Inf Sci 9 1-16
[5]  
Wen CY(2016)Prediction of period-doubling bifurcation based on dynamic recognition and its application to power systems Int J Bifur Chaos 09 1-14
[6]  
Chen D(2021)Anti-control of periodic firing in HR model in the aspects of position, amplitude and frequency Cogn Neurodyn 15 533-545
[7]  
Wang C(2013)From complete to modulated synchrony in networks of identical Hindmarsh–Rose neurons Euro Phys J Spec Top 10 2407-2416
[8]  
Dong X(2018)Synchronization of coupled FitzHugh-Nagumo neurons using self-feedback time delay Int J Bifu Chaos 02 1-15
[9]  
Chen D(2020)A novel topology identification method based on compressive sensing for multidimensional networks Int J Mod Phys B 2020 1-17
[10]  
Wang C(1995)On the persistancy of excitation in radial basis function network identification of nonlinear systems IEEE Trans Neural Netw 6 1237-1244