Autores
Ramírez Morales Royce Richmond
Ponce Ponce Victor Hugo
Molina Lozano Herón
Sossa Azuela Juan Humberto
Islas García Oscar
Rubio Espino Elsa
Título Analog Implementation of a Spiking Neuron with Memristive Synapses for Deep Learning Processing
Tipo Revista
Sub-tipo JCR
Descripción Mathematics
Resumen Analog neuromorphic prototyping is essential for designing and testing spiking neuron models that use memristive devices as synapses. These prototypes can have various circuit configurations, implying different response behaviors that custom silicon designs lack. The prototype’s behavior results can be optimized for a specific foundry node, which can be used to produce a customized on-chip parallel deep neural network. Spiking neurons mimic how the biological neurons in the brain communicate through electrical potentials. Doing so enables more powerful and efficient functionality than traditional artificial neural networks that run on von Neumann computers or graphic processing unit-based platforms. Therefore, on-chip parallel deep neural network technology can accelerate deep learning processing, aiming to exploit the brain’s unique features of asynchronous and event-driven processing by leveraging the neuromorphic hardware’s inherent parallelism and analog computation capabilities. This paper presents the design and implementation of a leaky integrate-and-fire (LIF) neuron prototype implemented with commercially available components on a PCB board. The simulations conducted in LTSpice agree well with the electrical test measurements. The results demonstrate that this design can be used to interconnect many boards to build layers of physical spiking neurons, with spike-timing-dependent plasticity as the primary learning algorithm, contributing to the realization of experiments in the early stage of adopting analog neuromorphic computing.
Observaciones DOI 10.3390/math12132025
Lugar Basel
País Suiza
No. de páginas Article number 2025
Vol. / Cap. v. 12 no. 13
Inicio 2024-06-29
Fin
ISBN/ISSN