Department of Computational Neuroscience, Bernstein Center for Computational Neuroscience, Third Institute of Physics-Biophysics, Georg-August-University, Göttingen, Germany; Department of Cognitive Modeling, Institute for Cognitive Science Studies Tehran (Pardis), Iran.
School of Social Sciences and Psychology & Marcs Institute for Brain and Behavior, University of Western Sydney, Sydney, New South Wales, Australia.
Neural Netw. 2017 Mar;87:96-108. doi: 10.1016/j.neunet.2016.11.002. Epub 2016 Nov 23.
Recent studies have demonstrated that Drosophila melanogaster (briefly Drosophila) can successfully perform higher cognitive processes including second order olfactory conditioning. Understanding the neural mechanism of this behavior can help neuroscientists to unravel the principles of information processing in complex neural systems (e.g. the human brain) and to create efficient and robust robotic systems. In this work, we have developed a biologically-inspired spiking neural network which is able to execute both first and second order conditioning. Experimental studies demonstrated that volume signaling (e.g. by the gaseous transmitter nitric oxide) contributes to memory formation in vertebrates and invertebrates including insects. Based on the existing knowledge of odor encoding in Drosophila, the role of retrograde signaling in memory function, and the integration of synaptic and non-synaptic neural signaling, a neural system is implemented as Simulated fly. Simulated fly navigates in a two-dimensional environment in which it receives odors and electric shocks as sensory stimuli. The model suggests some experimental research on retrograde signaling to investigate neural mechanisms of conditioning in insects and other animals. Moreover, it illustrates a simple strategy to implement higher cognitive capabilities in machines including robots.
最近的研究表明,黑腹果蝇(简称果蝇)可以成功地进行更高阶的认知过程,包括二阶嗅觉条件反射。理解这种行为的神经机制可以帮助神经科学家揭示复杂神经系统(如人脑)中的信息处理原理,并创建高效、稳健的机器人系统。在这项工作中,我们开发了一种受生物启发的尖峰神经网络,它能够执行一阶和二阶条件反射。实验研究表明,容积信号(例如气态递质一氧化氮)有助于脊椎动物和无脊椎动物(包括昆虫)的记忆形成。基于果蝇中气味编码的现有知识、逆行信号在记忆功能中的作用以及突触和非突触神经信号的整合,我们实现了一个名为“Simulated fly”的神经网络系统。Simulated fly 在二维环境中导航,接收气味和电击作为感觉刺激。该模型提出了一些关于逆行信号的实验研究,以调查昆虫和其他动物的条件反射的神经机制。此外,它还说明了在机器(包括机器人)中实现更高阶认知能力的一种简单策略。