Coronel-Escamilla A, Gomez-Aguilar J F, Stamova I, Santamaria F
Department of Biology, University of Texas at San Antonio, San Antonio, TX 78249, USA.
National Center for Research and Technological Development, (CENIDET), Morelos, 62490, Mexico.
Chaos Solitons Fractals. 2020 Nov;140. doi: 10.1016/j.chaos.2020.110149. Epub 2020 Aug 1.
We studied the effects of using fractional order proportional, integral, and derivative (PID) controllers in a closed-loop mathematical model of deep brain stimulation. The objective of the controller was to dampen oscillations from a neural network model of Parkinson's disease. We varied intrinsic parameters, such as the gain of the controller, and extrinsic variables, such as the excitability of the network. We found that in most cases, fractional order components increased the robustness of the model multi-fold to changes in the gains of the controller. Similarly, the controller could be set to a fixed set of gains and remain stable to a much larger range, than for the classical PID case, of changes in synaptic weights that otherwise would cause oscillatory activity. The increase in robustness is a consequence of the properties of fractional order derivatives that provide an intrinsic memory trace of past activity, which works as a negative feedback system. Fractional order PID controllers could provide a platform to develop stand-alone closed-loop deep brain stimulation systems.
我们研究了在深部脑刺激的闭环数学模型中使用分数阶比例、积分和微分(PID)控制器的效果。控制器的目标是抑制帕金森病神经网络模型产生的振荡。我们改变了诸如控制器增益等内在参数,以及诸如网络兴奋性等外在变量。我们发现,在大多数情况下,分数阶分量使模型对控制器增益变化的鲁棒性提高了数倍。同样,与经典PID情况相比,该控制器可以设置为一组固定的增益,并且对于否则会导致振荡活动的突触权重变化,在更大的范围内保持稳定。鲁棒性的提高是分数阶导数特性的结果,分数阶导数提供了过去活动的内在记忆痕迹,起到负反馈系统的作用。分数阶PID控制器可以为开发独立的闭环深部脑刺激系统提供一个平台。