2021
DOI: 10.1002/aisy.202100114
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Energy‐Efficient Memristive Euclidean Distance Engine for Brain‐Inspired Competitive Learning

Abstract: Inspired by competitive rules of the nature, competitive learning contributes to the specialization of the human brain and the general creativity of mankind. However, the construction of hardware competitive learning neural network still faces great challenges due to the lack of an accurate distance computation method and a self‐adaptive in situ training scheme. Herein, a fully memristive Euclidean distance (ED) engine based on analog multiply‐accumulate operation in a 32 × 32 TiN/TaO x /HfO x /TiN 1T1R array … Show more

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Cited by 10 publications
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