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A > 64 Multiple States and > 210 TOPS/W High Efficient Computing by Monolithic Si/CAAC-IGZO + Super-Lattice ZrO2/Al2 O3/ZrO2 for Ultra-Low Power Edge AI Application

M. -C. Chen,S. Ohshita, S. Amano,Y. Kurokawa, S. Watanabe, Y. Imoto, Y. Ando, W. -H. Hsieh,C. -H. Chang,C. -C. Wu,S. -S. Chuang, H. Yoshida, M. -C. Lu,M. -H. Liao,S. -Z. Chang, S. Yamazaki

2022 INTERNATIONAL ELECTRON DEVICES MEETING, IEDM(2022)

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Abstract
We present a novel Si/CAACFIGZO + SuperLattice ZrO2/Al2 O3/ZrO2 (SL-ZAZ) analog in-memory computing (AiMC) chip by monolithic 3D technique with the high thermal stability of Si/OS process. The SL-ZAZ not just improves storage capacitance > 50 %, but also makes leakage current lower > 30% compared with our last year’s IEDM work. Due to this study, the monolithic Si/CAAC-IGZO + SL-ZAZ technique can further reduce unit cell layout area by 25 % for ultra-low power edge A I application. This monolithic AiMC chip achieves > 64 multiple weighting states, an operation energy efficiency > 210 TOPS/W, and an inference accuracy can keep over 90 % (MNIST) even at 125°C high temperature operation.
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Key words
CAAC-IGZO,analog in-memory computing,high efficient,low power,monolithic 3D integration
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