1. Design and simulation of memristor-based neural networks
- Author
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Lázaro, Pablo Alex, Gallo, Ignacio Jiménez, Aranda, Juan Roldán, García, Alberto del Barrio, Juan, Guillermo Botella, Molinos, Francisco Jiménez, Lázaro, Pablo Alex, Gallo, Ignacio Jiménez, Aranda, Juan Roldán, García, Alberto del Barrio, Juan, Guillermo Botella, and Molinos, Francisco Jiménez
- Abstract
In recent times, neural networks have been gaining increasing importance in fields such as pattern recognition and computer vision. However, their usage entails significant energy and hardware costs, limiting the domains in which this technology can be employed. In this context, the feasibility of utilizing analog circuits based on memristors as efficient alternatives in neural network inference is being considered. Memristors stand out for their configurability and low power consumption. To study the feasibility of using these circuits, a physical model has been adapted to accurately simulate the behavior of commercial memristors from KNOWM. Using this model, multiple neural networks have been designed and simulated, yielding highly satisfactory results.
- Published
- 2023