2023
DOI: 10.3389/fncom.2023.1215824
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Exploring spiking neural networks: a comprehensive analysis of mathematical models and applications

Sanaullah,
Shamini Koravuna,
Ulrich Rückert
et al.

Abstract: 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 LIF and NLIF, 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 add… Show more

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Cited by 13 publications
(1 citation statement)
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“…SNNs offer promising applications due to their resemblance to biological brains and unique computational capabilities [ 157 ]. Particularly in neuromorphic engineering, SNNs closely mimic biological brain functions, making them ideal for tasks like sensory processing, pattern recognition, and motor control in robots and autonomous systems [ 158 , 159 ]. Their event-driven nature also makes them advantageous for low-power computing environments, making them suitable for IoT sensors and wearable electronics.…”
Section: Discussion On Pnns and Concluding Remarksmentioning
confidence: 99%
“…SNNs offer promising applications due to their resemblance to biological brains and unique computational capabilities [ 157 ]. Particularly in neuromorphic engineering, SNNs closely mimic biological brain functions, making them ideal for tasks like sensory processing, pattern recognition, and motor control in robots and autonomous systems [ 158 , 159 ]. Their event-driven nature also makes them advantageous for low-power computing environments, making them suitable for IoT sensors and wearable electronics.…”
Section: Discussion On Pnns and Concluding Remarksmentioning
confidence: 99%