首页> 外文期刊>International Journal of Modern Physics, B. Condensed Matter Physics, Statistical Physics, Applied Physics >FPGA-based hardware simulation of nonlinear autoregressive Volterra model to reconstruct the single neuron spike pattern
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FPGA-based hardware simulation of nonlinear autoregressive Volterra model to reconstruct the single neuron spike pattern

机译:基于FPGA的非线性自动增加Volterra模型的硬件仿真,重建单个神经元尖峰图案

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摘要

This study explores the implementation of the nonlinear autoregressive Volterra (NARV) model using a field programmable gate arrays (FPGAs)-based hardware simulation platform and accomplishes the identification process of the Hodgkin Huxley (HH) model. First, a physiological detailed single-compartment HH model is applied to generate experiment data sets and the electrical behavior of neurons are described by the membrane potential. Then, based on the injected input current and the output membrane potential, a second-order NARV model is constructed and implemented on FPGA-based simulation platforms. The NARV modeling method is data-driven, requiring no accurate physiological information and the FPGA-based hardware simulation can provide a real time and high-performance platform to deal with the drawbacks of software simulation. Therefore, the proposed method in this paper is capable of handling the nonlinearities and uncertainties in nonlinear neural systems and may help promote the development of clinical treatment devices.
机译:本研究探讨了使用现场可编程门阵列(FPGA)的硬件仿真平台的非线性自回归Volterra(NARV)模型的实现,并完成了Hodgkin Huxley(HH)模型的识别过程。首先,应用生理学详细的单室HH模型来产生实验数据集,并且通过膜电位描述神经元的电动行为。然后,基于注入的输入电流和输出膜电位,在基于FPGA的仿真平台上构建和实现二阶NARV模型。 NARV建模方法是数据驱动的,不需要准确的生理信息,并且基于FPGA的硬件仿真可以提供实时和高性能平台来处理软件仿真的缺点。因此,本文所提出的方法能够处理非线性神经系统中的非线性和不确定性,并且可以帮助促进临床治疗装置的发展。

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