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[논문/SCIE] A High-Performance and Ultra-Low-Power Accelerator Design fo…

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댓글 0건 조회 3회 작성일 25-08-08 15:53

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* 성과기관 : 한국전자기술연구원

* 학술지명 : Electronics(MDPI)


* Abstract *

This article addresses the growing need in resource-constrained edge computing scenarios for energy-efficient convolutional neural network (CNN) accelerators on mobile Field-Programmable Gate Array (FPGA) systems. In particular, we concentrate on register transfer level (RTL) design flow optimization to improve programming speed and power efficiency. We present a re-configurable accelerator design optimized for CNN-based object-detection applications, especially suitable for mobile FPGA platforms like the Xilinx PYNQ-Z2. By not only optimizing the MAC module using Enhanced clock gating (ECG), the accelerator can also use low-power techniques such as Local explicit clock gating (LECG) and Local explicit clock enable (LECE) in memory modules to efficiently minimize data access and memory utilization. The evaluation using ResNet-20 trained on the CIFAR-10 dataset demonstrated significant improvements in power efficiency consumption (up to 22%) and performance. The findings highlight the importance of using different optimization techniques across multiple hardware modules to achieve better results in real-world applications.


논문 전문은 아래 링크를 통해 확인 가능합니다.

* 구글드라이브 : https://drive.google.com/file/d/1izpgtcb_OLS2ZA4Nnix_AAgBmw2pT-lT/view?usp=sharing

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