4.6 Article

Effect of Temperature on Analog Memristor in Neuromorphic Computing

Journal

IEEE TRANSACTIONS ON ELECTRON DEVICES
Volume 69, Issue 11, Pages 6102-6105

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TED.2022.3207710

Keywords

Memristor; neural network; neuromorphic computing; resistive switching; tantalum oxide; temperature impact

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This article extensively studies the influence of temperature instability on resistive memory switching in potential neuromorphic computing applications. The evaluation results show that ambient temperature can degrade the accuracy of neural networks.
In this article, the influence of the temperature instability of resistive memory switching on potential neuromorphic computing applications is extensively studied using an Intel TaOx-based analog-type memristor as a synaptic weight modulator in a neural network. Evaluation results show that the effect of ambient temperature during training and interference can degrade the neural network's accuracy due to inefficient weight updates and inevitable resistance or conductance drifting. Our results provide additional insights into device-level physical models and simple circuit-level design guidance for potential hardware-based neuromorphic computing applications.

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