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Time-varying data processing with nonvolatile memristor-based temporal kernel.

Yoon Ho JangWoohyun KimJihun KimKyung Seok WooHyun Jae LeeJeong Woo JeonSung Keun ShimJanguk HanCheol Seong Hwang
Published in: Nature communications (2021)
Recent advances in physical reservoir computing, which is a type of temporal kernel, have made it possible to perform complicated timing-related tasks using a linear classifier. However, the fixed reservoir dynamics in previous studies have limited application fields. In this study, temporal kernel computing was implemented with a physical kernel that consisted of a W/HfO2/TiN memristor, a capacitor, and a resistor, in which the kernel dynamics could be arbitrarily controlled by changing the circuit parameters. After the capability of the temporal kernel to identify the static MNIST data was proven, the system was adopted to recognize the sequential data, ultrasound (malignancy of lesions) and electrocardiogram (arrhythmia), that had a significantly different time constant (10-7 vs. 1 s). The suggested system feasibly performed the tasks by simply varying the capacitance and resistance. These functionalities demonstrate the high adaptability of the present temporal kernel compared to the previous ones.
Keyphrases
  • electronic health record
  • physical activity
  • mental health
  • magnetic resonance imaging
  • working memory
  • data analysis
  • computed tomography
  • machine learning
  • ultrasound guided
  • neural network