Projekteja vuodessa
Abstrakti
Deep neural network (DNN) accelerators are increasingly integrated into sensing applications, such as wearables and sensor networks, to provide advanced in-sensor processing capabilities. Given wearables' strict size and power requirements, minimizing the area and energy consumption of DNN accelerators is a critical concern. In that regard, computing DNN models in the time domain is a promising architecture, taking advantage of both technology scaling friendliness and efficiency. Yet, time-domain accelerators are typically not fully digital, limiting the full benefits of time-domain computation. In this work, we propose an all-digital time-domain accelerator with a small size and low energy consumption to target precision in-sensor processing like human activity recognition (HAR). The proposed accelerator features a simple and efficient architecture without dependencies on analog nonidealities such as leakage and charge errors. An eight-neuron layer (core computation layer) is implemented in 22-nm FD-SOI technology. The layer occupies 70 × 70 μ m while supporting multibit inputs (8-bit) and weights (8-bit) with signed accumulation up to 18 bits. The power dissipation of the computation layer is 576 μ W at 0.72-V supply and 500-MHz clock frequency achieving an average area efficiency of 24.74 GOPS/mm 2 (up to 544.22 GOPS/mm 2 ), an average energy efficiency of 0.21 TOPS/W (up to 4.63 TOPS/W), and a normalized energy efficiency of 13.46 1b-TOPS/W (up to 296.30 1b-TOPS/W).
Alkuperäiskieli | Englanti |
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Artikkeli | 10758340 |
Sivut | 2220-2231 |
Sivumäärä | 12 |
Julkaisu | IEEE Transactions on Very Large Scale Integration (VLSI) Systems |
Vuosikerta | 32 |
Numero | 12 |
DOI - pysyväislinkit | |
Tila | Julkaistu - 2024 |
OKM-julkaisutyyppi | A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä |
Sormenjälki
Sukella tutkimusaiheisiin 'A 22-nm All-Digital Time-Domain Neural Network Accelerator for Precision In-Sensor Processing'. Ne muodostavat yhdessä ainutlaatuisen sormenjäljen.Projektit
- 1 Päättynyt
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WHISTLE: When integrated systems gain life experience: towards self-learning circuits with resource-efficient embedded artificial intelligence
Andraud, M. (Vastuullinen tutkija), Adam, K. (Projektin jäsen), Yao, L. (Projektin jäsen), Periasamy, K. (Projektin jäsen), Leslin, J. (Projektin jäsen) & Bhowmick, S. (Projektin jäsen)
01/09/2020 → 31/08/2024
Projekti: Academy of Finland: Other research funding
Laitteet
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Aalto Electronics-ICT
Ryynänen, J. (Manager)
Elektroniikan ja nanotekniikan laitosLaitteistot/tilat: Facility