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Equation-oriented specification of neural models for simulations

机译:用于仿真的神经模型的面向方程的规范

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摘要

Simulating biological neuronal networks is a core method of research in computational neuroscience. A full specification of such a network model includes a description of the dynamics and state changes of neurons and synapses, as well as the synaptic connectivity patterns and the initial values of all parameters. A standard approach in neuronal modeling software is to build network models based on a library of pre-defined components and mechanisms; if a model component does not yet exist, it has to be defined in a special-purpose or general low-level language and potentially be compiled and linked with the simulator. Here we propose an alternative approach that allows flexible definition of models by writing textual descriptions based on mathematical notation. We demonstrate that this approach allows the definition of a wide range of models with minimal syntax. Furthermore, such explicit model descriptions allow the generation of executable code for various target languages and devices, since the description is not tied to an implementation. Finally, this approach also has advantages for readability and reproducibility, because the model description is fully explicit, and because it can be automatically parsed and transformed into formatted descriptions. The presented approach has been implemented in the Brian2 simulator.
机译:模拟生物神经元网络是计算神经科学研究的核心方法。这种网络模型的完整规范包括对神经元和突触的动力学和状态变​​化的描述,以及突触连接模式和所有参数的初始值。神经元建模软件中的一种标准方法是基于预定义的组件和机制库来构建网络模型。如果模型组件尚不存在,则必须使用专用或通用的低级语言进行定义,并且有可能将其编译并与模拟器链接。在这里,我们提出了一种替代方法,该方法允许通过基于数学符号编写文本描述来灵活定义模型。我们证明了这种方法可以用最少的语法定义各种模型。此外,由于这种明确的模型描述不依赖于实现,因此允许生成用于各种目标语言和设备的可执行代码。最后,由于模型描述是完全明确的,并且可以自动解析并转换为格式化的描述,因此该方法还具有可读性和可重复性的优点。所提出的方法已在Brian2模拟器中实现。

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