Lim Hyungkwang, Kornijcuk Vladimir, Seok Jun Yeong, Kim Seong Keun, Kim Inho, Hwang Cheol Seong, Jeong Doo Seok
Electronic Materials Research Center, Korea Institute of Science and Technology, 136-791 Seoul, Republic of Korea.
Department of Materials Science and Engineering and Inter-university Semiconductor Research Center, Seoul National University, 151-744 Seoul, Republic of Korea.
Sci Rep. 2015 May 13;5:9776. doi: 10.1038/srep09776.
We conducted simulations on the neuronal behavior of neuristor-based leaky integrate-and-fire (NLIF) neurons. The phase-plane analysis on the NLIF neuron highlights its spiking dynamics--determined by two nullclines conditional on the variables on the plane. Particular emphasis was placed on the operational noise arising from the variability of the threshold switching behavior in the neuron on each switching event. As a consequence, we found that the NLIF neuron exhibits a Poisson-like noise in spiking, delimiting the reliability of the information conveyed by individual NLIF neurons. To highlight neuronal information coding at a higher level, a population of noisy NLIF neurons was analyzed in regard to probability of successful information decoding given the Poisson-like noise of each neuron. The result demonstrates highly probable success in decoding in spite of large variability--due to the variability of the threshold switching behavior--of individual neurons.
我们对基于神经晶体管的漏电积分发放(NLIF)神经元的神经行为进行了模拟。对NLIF神经元的相平面分析突出了其发放动力学——由平面上变量的两条零倾线决定。特别强调了神经元每次开关事件中阈值开关行为的变异性所产生的操作噪声。结果,我们发现NLIF神经元在发放时表现出类似泊松的噪声,这限制了单个NLIF神经元所传递信息的可靠性。为了在更高层次上突出神经元信息编码,考虑到每个神经元类似泊松的噪声,对一群有噪声的NLIF神经元进行了成功信息解码概率的分析。结果表明,尽管单个神经元由于阈值开关行为的变异性而存在很大差异,但解码成功的可能性很高。