Thresholding Computing with Heterogeneous Integration of Memristive Kernel with Metal‐Oxide‐Semiconductor Capacitor for Temporal Data Analysis
Precise event detection within time‐series data is increasingly critical, particularly in noisy environments. Reservoir computing, a robust computing method widely utilized with memristive devices, is efficient in processing temporal signals. However, it typically lacks intrinsic thresholding mechan...
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Veröffentlicht in: | Advanced materials (Weinheim) 2024-12, Vol.36 (50), p.e2410432-n/a |
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Zusammenfassung: | Precise event detection within time‐series data is increasingly critical, particularly in noisy environments. Reservoir computing, a robust computing method widely utilized with memristive devices, is efficient in processing temporal signals. However, it typically lacks intrinsic thresholding mechanisms essential for precise event detection. This study introduces a new approach by integrating two Pt/HfO2/TiN (PHT) memristors and one Ni/HfO2/n‐Si (NHS) metal‐oxide‐semiconductor capacitor (2M1MOS) to implement a tunable thresholding function. The current‐voltage nonlinearity of memristors combined with the capacitance‐voltage nonlinearity of the capacitor forms the basis of the 2M1MOS kernel system. The proposed kernel hardware effectively records feature‐specified information of the input signal onto the memristors through capacitive thresholding. In electrocardiogram analysis, the memristive response exhibited a more than ten‐fold difference between arrhythmia and normal beats. In isolated spoken digit classification, the kernel achieved an error rate of only 0.7% by tuning thresholds for various time‐specific conditions. The kernel is also applied to biometric authentication by extracting personal features using various threshold times, presenting more complex and multifaceted uses of heartbeats and voice data as bio‐indicators. These demonstrations highlight the potential of thresholding computing in a memristive framework with heterogeneous integration.
This study introduces an integrated thresholding kernel with two Pt/HfO2/TiN (PHT) memristors and Ni/HfO2/n‐Si (NHS) metal‐oxide‐semiconductor capacitor (2M1MOS) for precise thresholding in time‐series data. This kernel system demonstrates an improved detection scheme in ECG analysis and achieved high accuracy in spoken digit classification, utilizing the capacitive thresholding to enhance memristive event detection ability for bio‐indicator applications. |
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ISSN: | 0935-9648 1521-4095 1521-4095 |
DOI: | 10.1002/adma.202410432 |