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Fast and stable numerical method for neuronal modelling

机译:快速稳定的神经元建模数值方法

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Excitable cell modelling is of a prime interest in predicting and targeting neural activity. Two main limits in solving related equations are speed and stability of numerical method. Since there is a tradeoff between accuracy and speed, most previously presented methods for solving partial differential equations (PDE) are focused on one side. More speed means more accurate simulations and therefore better device designing. By considering the variables in finite differenced equation in proper time and calculating the unknowns in the specific sequence, a fast, stable and accurate method is introduced in this paper for solving neural partial differential equations. Propagation of action potential in giant axon is studied by proposed method and traditional methods. Speed, consistency and stability of the methods are compared and discussed. The proposed method is as fast as forward methods and as stable as backward methods. Forward methods are known as fastest methods and backward methods are stable in any circumstances. Complex structures can be simulated by proposed method due to speed and stability of the method. (C) 2016 Elsevier B.V. All rights reserved.
机译:在预测和靶向神经活动中,兴奋性细胞建模具有重大意义。求解相关方程的两个主要限制是数值方法的速度和稳定性。由于要在精度和速度之间进行权衡,因此,大多数先前提出的用于求解偏微分方程(PDE)的方法都集中在一侧。更高的速度意味着更准确的仿真,因此可以进行更好的设备设计。通过适时考虑有限差分方程中的变量并计算特定序列的未知数,本文提出了一种快速,稳定,准确的方法来求解神经偏微分方程。用提出的方法和传统方法研究巨轴突中动作电位的传播。对方法的速度,一致性和稳定性进行了比较和讨论。所提出的方法与前向方法一样快,并且与后向方法一样稳定。前向方法被称为最快方法,后向方法在任何情况下都是稳定的。由于该方法的速度和稳定性,可以通过提出的方法来模拟复杂的结构。 (C)2016 Elsevier B.V.保留所有权利。

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