Koravuna Shamini, Rückert Ulrich, Jungeblut Thorsten
Industrial the Internet of Things, Department of Engineering and Mathematics, Bielefeld University of Applied Sciences and Arts, Bielefeld, Germany.
AG Kognitronik & Sensorik, Technical Faculty, Universität Bielefeld, Bielefeld, Germany.
Front Comput Neurosci. 2023 Aug 24;17:1215824. doi: 10.3389/fncom.2023.1215824. eCollection 2023.
This article presents a comprehensive analysis of spiking neural networks (SNNs) and their mathematical models for simulating the behavior of neurons through the generation of spikes. The study explores various models, including and , for constructing SNNs and investigates their potential applications in different domains. However, implementation poses several challenges, including identifying the most appropriate model for classification tasks that demand high accuracy and low-performance loss. To address this issue, this research study compares the performance, behavior, and spike generation of multiple SNN models using consistent inputs and neurons. The findings of the study provide valuable insights into the benefits and challenges of SNNs and their models, emphasizing the significance of comparing multiple models to identify the most effective one. Moreover, the study quantifies the number of spiking operations required by each model to process the same inputs and produce equivalent outputs, enabling a thorough assessment of computational efficiency. The findings provide valuable insights into the benefits and limitations of SNNs and their models. The research underscores the significance of comparing different models to make informed decisions in practical applications. Additionally, the results reveal essential variations in biological plausibility and computational efficiency among the models, further emphasizing the importance of selecting the most suitable model for a given task. Overall, this study contributes to a deeper understanding of SNNs and offers practical guidelines for using their potential in real-world scenarios.
本文对脉冲神经网络(SNN)及其通过生成脉冲来模拟神经元行为的数学模型进行了全面分析。该研究探索了包括[具体模型1]和[具体模型2]在内的各种用于构建SNN的模型,并研究了它们在不同领域的潜在应用。然而,实现过程面临若干挑战,包括为要求高精度和低性能损失的分类任务确定最合适的模型。为解决这一问题,本研究使用一致的输入和神经元比较了多个SNN模型的性能、行为和脉冲生成情况。研究结果为SNN及其模型的优势和挑战提供了有价值的见解,强调了比较多个模型以确定最有效模型的重要性。此外,该研究量化了每个模型处理相同输入并产生等效输出所需的脉冲操作数量,从而能够对计算效率进行全面评估。研究结果为SNN及其模型的优势和局限性提供了有价值的见解。该研究强调了在实际应用中比较不同模型以做出明智决策的重要性。此外,结果揭示了各模型在生物合理性和计算效率方面的本质差异,进一步强调了为给定任务选择最合适模型的重要性。总体而言,本研究有助于更深入地理解SNN,并为在实际场景中发挥其潜力提供实用指南。