D. Zhevnenko, F. Meshchaninov, V. Shmakov, E. Kharchenko, V. Kozhevnikov, A. Chernova, A. Belov, A. Mikhaylov, E. Gornev
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Introducing a neural network approach to memristor dynamics: A comparative study with traditional compact models
Modeling the switching dynamics of memristive devices poses significant challenges for real-world applications, particularly in achieving long-term operational stability. While conventional compact models are effective for short-term simulations, they fail to capture the degradation effects and complexities associated with extended switching behavior. In this work, we propose a novel framework for forecasting memristor switching series using state-of-the-art deep learning architectures. Experimental data from Au/Ta/ZrO₂(Y)/TaOx/TiN/Ti-based memristors were used to compare a classical compact model—featuring a linear drift model with ARIMA corrections—against advanced neural networks, including TimesNet, FredFormer, ATFNet, and SparseTSF. Our results demonstrate that deep learning models, particularly TimesNet, significantly improve predictive accuracy and robustness over long-term switching series. This study provides a foundation for integrating deep learning into memristor modeling, paving the way for more reliable and scalable simulations.
期刊介绍:
Chaos, Solitons & Fractals strives to establish itself as a premier journal in the interdisciplinary realm of Nonlinear Science, Non-equilibrium, and Complex Phenomena. It welcomes submissions covering a broad spectrum of topics within this field, including dynamics, non-equilibrium processes in physics, chemistry, and geophysics, complex matter and networks, mathematical models, computational biology, applications to quantum and mesoscopic phenomena, fluctuations and random processes, self-organization, and social phenomena.