首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >PLATO: data-oriented approach to collaborative large-scale brain system modeling.
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PLATO: data-oriented approach to collaborative large-scale brain system modeling.

机译:PLATO:面向数据的协作大规模大脑系统建模方法。

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摘要

The brain is a complex information processing system, which can be divided into sub-systems, such as the sensory organs, functional areas in the cortex, and motor control systems. In this sense, most of the mathematical models developed in the field of neuroscience have mainly targeted a specific sub-system. In order to understand the details of the brain as a whole, such sub-system models need to be integrated toward the development of a neurophysiologically plausible large-scale system model. In the present work, we propose a model integration library where models can be connected by means of a common data format. Here, the common data format should be portable so that models written in any programming language, computer architecture, and operating system can be connected. Moreover, the library should be simple so that models can be adapted to use the common data format without requiring any detailed knowledge on its use. Using this library, we have successfully connected existing models reproducing certain features of the visual system, toward the development of a large-scale visual system model. This library will enable users to reuse and integrate existing and newly developed models toward the development and simulation of a large-scale brain system model. The resulting model can also be executed on high performance computers using Message Passing Interface (MPI).
机译:大脑是一个复杂的信息处理系统,可以分为多个子系统,例如感觉器官,皮质中的功能区域和运动控制系统。从这个意义上讲,神经科学领域开发的大多数数学模型主要针对特定​​的子系统。为了理解整个大脑的细节,需要将这样的子系统模型集成到神经生理学上合理的大规模系统模型的开发中。在当前的工作中,我们提出了一个模型集成库,其中可以通过通用数据格式连接模型。在这里,通用数据格式应该是可移植的,以便可以连接以任何编程语言,计算机体系结构和操作系统编写的模型。此外,该库应该很简单,以便模型可以适用于使用通用数据格式,而无需任何有关其使用的详细知识。使用该库,我们已经成功地将再现视觉系统某些功能的现有模型连接起来,以开发大型视觉系统模型。该库将使用户能够重用和集成现有和新开发的模型,以进行大规模脑系统模型的开发和仿真。生成的模型也可以使用消息传递接口(MPI)在高性能计算机上执行。

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