Design of an Approximate Adder based on Modified Full Adder and Nonzero Truncation for Machine Learning

JOURNAL OF SEMICONDUCTOR TECHNOLOGY AND SCIENCE(2023)

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摘要
This paper proposes a novel approximate adder based on a modified full adder that exploits AND-based bit-by-bit carry prediction and OR-based summation, and nonzero truncation scheme. The proposed adder design offers good tradeoff between the computation accuracy and hardware efficiency. When implemented in 32-nm CMOS technology, the proposed adder improves the area, power, and energy by up to 48.9%, 45.6%, and 45.4%, respectively, compared to existing approximate adders considered in this paper. Furthermore, our adder demonstrates excellent processing quality with remarkably reduced hardware resource when applied to image processing and machine learning applications.
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关键词
Approximate computing, approximate adder, energy efficiency, machine learning
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