DocumentCode :
1766470
Title :
A 1 TOPS/W Analog Deep Machine-Learning Engine With Floating-Gate Storage in 0.13 µm CMOS
Author :
Junjie Lu ; Young, Stephanie ; Arel, Itamar ; Holleman, Jeremy
Author_Institution :
Dept. of Electr. Eng. & Comput. Sciene, Univ. of Tennessee, Knoxville, TN, USA
Volume :
50
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
270
Lastpage :
281
Abstract :
An analog implementation of a deep machine-learning system for efficient feature extraction is presented in this work. It features online unsupervised trainability and non-volatile floating-gate analog storage. It utilizes a massively parallel reconfigurable current-mode analog architecture to realize efficient computation, and leverages algorithm-level feedback to provide robustness to circuit imperfections in analog signal processing. A 3-layer, 7-node analog deep machine-learning engine was fabricated in a 0.13 μm standard CMOS process, occupying 0.36 mm 2 active area. At a processing speed of 8300 input vectors per second, it consumes 11.4 μW from the 3 V supply, achieving 1×10 12 operation per second per Watt of peak energy efficiency. Measurement demonstrates real-time cluster analysis, and feature extraction for pattern recognition with 8-fold dimension reduction with an accuracy comparable to the floating-point software simulation baseline.
Keywords :
CMOS digital integrated circuits; feature extraction; pattern clustering; random-access storage; real-time systems; unsupervised learning; 8-fold dimension reduction; algorithm-level feedback; analog signal processing; deep machine-learning engine; feature extraction; floating-point software simulation baseline; massively parallel reconfigurable current-mode analog architecture; nonvolatile floating-gate analog storage; online unsupervised trainability; pattern recognition; power 11.4 muW; real-time cluster analysis; size 0.13 mum; standard CMOS process; voltage 3 V; Computer architecture; Engines; Feature extraction; Learning systems; Logic gates; Training; Tunneling; Analog signal processing; current mode arithmetic; deep machine learning; floating gate; neuromorphic engineering; translinear circuits;
fLanguage :
English
Journal_Title :
Solid-State Circuits, IEEE Journal of
Publisher :
ieee
ISSN :
0018-9200
Type :
jour
DOI :
10.1109/JSSC.2014.2356197
Filename :
6919341
Link To Document :
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