Analog Sequential Hippocampal Memory Model for Trajectory Learning and Recalling: A Robustness Analysis Overview

IF 6.8 Q1 AUTOMATION & CONTROL SYSTEMS
Daniel Casanueva-Morato, Alvaro Ayuso-Martinez, Giacomo Indiveri, Juan P. Dominguez-Morales, Gabriel Jimenez-Moreno
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Abstract

The rapid expansion of information systems in all areas of society demands more powerful, efficient, and low-energy consumption computing systems. Neuromorphic engineering has emerged as a solution that attempts to mimic the brain to incorporate its capabilities to solve complex problems in a computationally and energy-efficient way in real time. Within neuromorphic computing, building systems to efficiently store the information is still a challenge. Among all the brain regions, the hippocampus stands out as a short-term memory capable of learning and recalling large amounts of information quickly and efficiently. Herein, a spike-based bio-inspired hippocampus sequential memory model is proposed that makes use of the benefits of analog computing and spiking neural networks (SNNs): noise robustness, improved real-time operation, and energy efficiency. This model is applied to robotic navigation to learn and recall trajectories that lead to a goal position within a known grid environment. The model is implemented on the special-purpose SNNs mixed-signal DYNAP-SE hardware platform. Through extensive experimentation together with an extensive analysis of the model's behavior in the presence of external noise sources, its correct functioning is demonstrated, proving the robustness and consistency of the proposed neuromorphic sequential memory system.

Abstract Image

轨迹学习和回忆的模拟顺序海马记忆模型:稳健性分析综述
信息系统在社会各个领域的迅速发展需要更强大、更高效、更低能耗的计算系统。神经形态工程作为一种解决方案已经出现,它试图模仿大脑,以一种计算和节能的方式实时解决复杂问题。在神经形态计算中,构建有效存储信息的系统仍然是一个挑战。在所有大脑区域中,海马体作为一种能够快速有效地学习和回忆大量信息的短期记忆区而脱颖而出。本文提出了一种基于峰值的生物启发海马序列记忆模型,该模型利用了模拟计算和峰值神经网络(snn)的优点:噪声鲁棒性、改进的实时操作和能源效率。该模型应用于机器人导航,以学习和回忆在已知网格环境中导致目标位置的轨迹。该模型在专用snn混合信号DYNAP-SE硬件平台上实现。通过广泛的实验以及对模型在外部噪声源存在下的行为的广泛分析,证明了其正确的功能,证明了所提出的神经形态顺序记忆系统的鲁棒性和一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.30
自引率
0.00%
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审稿时长
4 weeks
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