Mao Yu, Tang Wallace, Liu Ying, Kocarev Ljupco
Department of Electronic Engineering, City University of Hong Kong, Hong Kong, China.
Cogn Process. 2009 Feb;10 Suppl 1:S41-53. doi: 10.1007/s10339-008-0230-2. Epub 2008 Oct 22.
This paper is to investigate the use of adaptive observers for the modeling of biological neurons and networks. Assuming that a neuron can be modeled as a continuous-time nonlinear system, it is possible to determine its unknown parameters using adaptive observer, based on the concept of adaptive synchronization. The same technique can be extended for the identification of an entire biological neural network. Some conventional observer designs are studied in this paper and satisfactory results are obtained, yet with some restrictions. To further extend the applicability of adaptive observers for the modeling process, a new design is suggested. It is based on a combination of linear feedback control approach and the dynamical minimization algorithm. The effectiveness of the designed adaptive observer is confirmed with simulations.
本文旨在研究自适应观测器在生物神经元和神经网络建模中的应用。假设神经元可建模为连续时间非线性系统,基于自适应同步的概念,利用自适应观测器可以确定其未知参数。同样的技术可以扩展用于识别整个生物神经网络。本文研究了一些传统的观测器设计并取得了满意的结果,但存在一些限制。为了进一步扩展自适应观测器在建模过程中的适用性,提出了一种新的设计。它基于线性反馈控制方法和动态最小化算法的结合。通过仿真验证了所设计的自适应观测器的有效性。