Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6944996 | Microelectronics Journal | 2018 | 6 Pages |
Abstract
An analog memory based on the high linearity source-follower buffer topology is proposed, which is applied to the emerging Analog Convolutional Neural Network (CNN) for buffering parameters and operation results. The proposed memory consists of a source-follower type buffer, which delivers an appreciably enhanced accuracy over that of the conventional buffer, and a storage capacitor to meet the Analog CNN processing demands of accurate short-term storage and multi-reading capability. The enhanced linearity of the proposed buffer is achieved by adopting high-threshold cascode (HTC) structure and low parasitic capacitance switch (LPCS). Moreover, a low leakage bootstrap (LLB) structure is integrated to enhance the turn-off performance of switch, which reduces the leakage and improves the accuracy of buffer significantly. Simulated with 180â¯nm CMOS mixed-signal process, the proposed analog memory unit achieves power consumption of 3.6 μW and output error of 0.4%, with the input voltage swing of 1.1 V.
Keywords
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Physical Sciences and Engineering
Computer Science
Hardware and Architecture
Authors
Qin Li, Yuntao Wu, Huifeng Zhu, Qi Wei, Fei Qiao, Sheng Zhang, Huazhong Yang,