VVTEAM: A Compact Behavioral Model for Volatile Memristors
- URL: http://arxiv.org/abs/2409.17723v1
- Date: Thu, 26 Sep 2024 10:52:04 GMT
- Title: VVTEAM: A Compact Behavioral Model for Volatile Memristors
- Authors: Tanay Patni, Rishona Daniels, Shahar Kvatinsky,
- Abstract summary: This paper proposes V-VTEAM, a compact, simple, general, and flexible behavioral model for volatile memristors.
The validity of the model is demonstrated by fitting it to an ion drift/diffusion-based Ag/SiOx/C/W volatile memristor, achieving a relative root mean error square of 4.5%.
- Score: 0.24578723416255754
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Volatile memristors have recently gained popularity as promising devices for neuromorphic circuits, capable of mimicking the leaky function of neurons and offering advantages over capacitor-based circuits in terms of power dissipation and area. Additionally, volatile memristors are useful as selector devices and for hardware security circuits such as physical unclonable functions. To facilitate the design and simulation of circuits, a compact behavioral model is essential. This paper proposes V-VTEAM, a compact, simple, general, and flexible behavioral model for volatile memristors, inspired by the VTEAM nonvolatile memristor model and developed in MATLAB. The validity of the model is demonstrated by fitting it to an ion drift/diffusion-based Ag/SiOx/C/W volatile memristor, achieving a relative root mean error square of 4.5%.
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