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SpikingLab: modelling agents controlled by Spiking Neural Networks in Netlogo

机译:SpikingLab:由Netlogo中的Spiking Neural Networks控制的建模代理

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摘要

The scientific interest attracted by Spiking Neural Networks (SNN) has lead to the development of tools for the simulation and study of neuronal dynamics ranging from phenomenological models to the more sophisticated and biologically accurate Hodgkin-and-Huxley-based and multi-compartmental models. However, despite the multiple features offered by neural modelling tools, their integration with environments for the simulation of robots and agents can be challenging and time consuming. The implementation of artificial neural circuits to control robots generally involves the following tasks: (1) understanding the simulation tools, (2) creating the neural circuit in the neural simulator, (3) linking the simulated neural circuit with the environment of the agent and (4) programming the appropriate interface in the robot or agent to use the neural controller. The accomplishment of the above-mentioned tasks can be challenging, especially for undergraduate students or novice researchers. This paper presents an alternative tool which facilitates the simulation of simple SNN circuits using the multi-agent simulation and the programming environment Netlogo (educational software that simplifies the study and experimentation of complex systems). The engine proposed and implemented in Netlogo for the simulation of a functional model of SNN is a simplification of integrate and fire (I&F) models. The characteristics of the engine (including neuronal dynamics, STDP learning and synaptic delay) are demonstrated through the implementation of an agent representing an artificial insect controlled by a simple neural circuit. The setup of the experiment and its outcomes are described in this work.
机译:Spiking Neural Networks(SNN)吸引了科学兴趣,从而导致了用于模拟和研究神经元动力学的工具的开发,范围从现象学模型到更复杂且生物学上更精确的基于霍奇金和赫克斯利的多隔室模型。但是,尽管神经建模工具提供了多种功能,但它们与用于模拟机器人和代理程序的环境的集成仍是一项艰巨且耗时的工作。实施控制机器人的人工神经回路通常涉及以下任务:(1)了解模拟工具,(2)在神经模拟器中创建神经回路,(3)将模拟的神经回路与代理环境链接起来,以及(4)在机器人或代理中编程适当的接口以使用神经控制器。完成上述任务可能具有挑战性,特别是对于大学生或新手研究人员而言。本文提出了一种替代工具,该工具可使用多主体仿真和编程环境Netlogo(简化复杂系统的研究和实验的教育软件)来简化简单SNN电路的仿真。在Netlogo中提出并实现的用于SNN功能模型仿真的引擎是集成和点火(I&F)模型的简化。引擎的特性(包括神经元动力学,STDP学习和突触延迟)通过一种代表由简单神经回路控制的人工昆虫的媒介的实现来证明。在这项工作中描述了实验的设置及其结果。

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