High-performance implementation of SM2 based on FPGA

Dan Zhang, Guoqiang Bai
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引用次数: 6

Abstract

This brief presents an FPGA-based ultra-high performance ECC implementation over SM2 prime field which can resist SPA. This processor is designed with bottom-up optimization focused on SM2 and make the best of advantages of modern FPGA. To counteract SPA more efficiently and reduce time cost, traditional MPL algorithm is modified to be the main algorithm which can execute point addition (PA) and point double (PD) in parallel. Then PA and PD are designed to be full-isochronous modules invoked by main algorithm to maximize the efficiency. Finite field operations adopt DSP blocks to increase frequency. Spliced multipliers are matched with same-frequency adders in the introduced pipeline structure, which improve hardware utilization to more than 95 percent. Run on Altera StratixII EP2S30F672 FPGA, this SM2 processor whose frequency reaches 62.3 MHz can be performed at a rate of about 1.3k point multiplications per second, and it only costs 8 DSPs and 4742 ALMs. Compared with other related works, our architecture offers not only ultra-high performance but also deep research about the FPGA-based implementation of SM2.
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基于FPGA的SM2的高性能实现
本文简要介绍了一种基于fpga的SM2 prime领域的超高性能ECC实现,该实现可以抵抗SPA。该处理器以SM2为核心,充分利用现代FPGA的优势,采用自下而上的优化设计。为了更有效地抵消SPA,降低时间成本,将传统的MPL算法改进为可并行执行点加法(PA)和点双乘法(PD)的主要算法。然后将PA和PD设计为全等时模块,由主算法调用,使效率最大化。有限场操作采用DSP模块提高频率。在引入的管道结构中,拼接乘法器与同频率加法器相匹配,从而将硬件利用率提高到95%以上。该SM2处理器在Altera StratixII EP2S30F672 FPGA上运行,频率达到62.3 MHz,每秒可执行约1.3k点乘法,仅消耗8个dsp和4742个ALMs。与其他相关工作相比,我们的架构不仅具有超高的性能,而且对基于fpga的SM2实现进行了深入的研究。
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