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Efficient digital implementation of a conductance-based globus pallidus neuron and the dynamics analysis

机译:高效的基于电导的Globus pallidus neuron和动力学分析的数字实施

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AbstractBalance between biological plausibility of dynamical activities and computational efficiency is one of challenging problems in computational neuroscience and neural system engineering. This paper proposes a set of efficient methods for the hardware realization of the conductance-based neuron model with relevant dynamics, targeting reproducing the biological behaviors with low-cost implementation on digital programmable platform, which can be applied in wide range of conductance-based neuron models. Modified GP neuron models for efficient hardware implementation are presented to reproduce reliable pallidal dynamics, which decode the information of basal ganglia and regulate the movement disorder related voluntary activities. Implementation results on a field-programmable gate array (FPGA) demonstrate that the proposed techniques and models can reduce the resource cost significantly and reproduce the biological dynamics accurately. Besides, the biological behaviors with weak network coupling are explored on the proposed platform, and theoretical analysis is also made for the investigation of biological characteristics of the structured pallidal oscillator and network. The implementation techniques provide an essential step towards the large-scale neural network to explore the dynamical mechanisms in real time. Furthermore, the proposed methodology enables the FPGA-based system a powerful platform for the investigation on neurodegenerative diseases and real-time control of bio-inspired neuro-robotics.
机译:<![CDATA [ 抽象 动力学活动生物学合理性和计算效率之间的平衡是挑战中计算神经和神经系统的工程问题中的一个。本文提出了一组用于硬件实现与相关动力学基于电导神经元模型的有效的方法,靶向再现与数字可编程平台,其可在宽范围的基于电导 - 神经元的被施加低成本实现生物学行为楷模。高效的硬件实现改进的GP神经元模型都重现可靠苍白球动力学,其中解码基底节的信息和规范相关的志愿活动的运动障碍。一个现场可编程门阵列(FPGA)上实现的结果表明,所提出的技术和模式可以显著降低资源成本和精确地再现生物动力学。此外,随着弱耦合网络的生物学行为进行了探讨建议的平台上,与理论分析,也为结构化苍白球振荡器和网络生物学特性的研究制造。实施技术提供对大型神经网络的一个必要步骤,以探索实时的动态机制。此外,所提出的方法使得能够基于FPGA的系统的强大平台对神经变性疾病和仿生神经机器人的实时控制调查 < / CE:抽象>

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