A Short Survey of the Development and Applications of Spiking Neural Networks of High Biological Plausibility

George-Iulian Uleru, M. Hulea, V. Manta
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Abstract

Abstract Spiking neural networks (SNNs) are inspired from natural computing, modelling with high accuracy the interactions and processes between the synapses of the neurons focusing on low response time and energy efficiency. This novel paradigm of event-based processing opens new opportunities for discovering applications and developing efficient learning methods that should highlight the advantages of SNNs such as the large memory capacity and the fast adaptation, while preserving the easy-to-use and portability of the conventional computing architectures. In this paper, we do a brief review of the developments of the past decades in the field of SNNs. We start with a brief history of the SNN and summarize the most common models of spiking neurons and methods to implement synaptic plasticity. We also classify the SNNs according to the implemented learning rules and network topology. We present the computational advantages, liabilities, and applications suitable for using SNNs in terms of energy efficiency and response time. In addition, we briefly sweep through the existing platforms and simulation frameworks for SNNs exploration. The paper ends with conclusions that show predictions of future challenges and the emerging research topics associated with SNNs.
高生物似然的尖峰神经网络发展与应用综述
脉冲神经网络(snn)受自然计算的启发,高精度地模拟神经元突触之间的相互作用和过程,专注于低响应时间和能量效率。这种基于事件处理的新范式为发现应用程序和开发有效的学习方法提供了新的机会,这些方法应突出snn的优势,如大内存容量和快速适应,同时保留传统计算架构的易于使用和可移植性。在本文中,我们简要回顾了近几十年来SNNs领域的发展。我们从SNN的简史开始,总结了最常见的尖峰神经元模型和实现突触可塑性的方法。我们还根据实现的学习规则和网络拓扑对snn进行了分类。我们从能源效率和响应时间方面介绍了snn的计算优势、缺点和适合使用snn的应用。此外,我们简要地回顾了snn探索的现有平台和仿真框架。论文最后的结论显示了对未来挑战的预测以及与snn相关的新兴研究课题。
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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