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- Title: Advanced Memristor Modeling: Memristor Circuits and Networks
- Author(s) Valeri Mladenov
- Publisher: Mdpi AG (February 19, 2019); eBook (Creative Commons Licensed)
- License(s): Creative Commons License (CC)
- Hardcover: 184 pages
- Language: English
- ISBN-10: 3038971049
- ISBN-13: 978-3038971047
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Due to its nano-scale dimensions, non-volatility and memorizing properties, the Memristor is a sound potential candidate for application in computer high-density memories, artificial neural networks and in many other electronic devices.
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- Advanced Memristor Modeling: Memristor Circuits and Networks (Valeri Mladenov)
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