Improving Logic Optimization in Sequential Circuits using Majority-inverter Graphs

Walter Lau Neto, Xifan Tang, Max Austin, L. Amarù, P. Gaillardon
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引用次数: 2

Abstract

Majority-inverter graph (MIG) is a recently introduced Boolean network that enables efficient logic manipulation. Recent works show that MIGs are capable of achieving significant improvements in area, delay, and power when comparing to current academic and commercial tools. However, current MIG optimizations are limited to combinational circuits, missing the sequential elements which are ubiquitous in practical implementations. This paper is the first to study the sequential optimization opportunities using MIGs. The presented extension leverages the efficiency of MIGs area and depth-oriented rewriting algorithms for combinational circuits in sequential networks. Experimental results showed that, averaged over the OpenCores benchmark suite, (1) when considering technology-independent evaluations, compared to a popular academic tool, our MIG-based sequential optimization brings an improvement of 9% and 38% in area and delay respectively; (2) when using a standard optimization+technology mapping flow for ASICs with a 7nm predictive standard cell library, the proposed sequential optimizer outperforms both academic and commercial tools in energy-delay product (EDP) by 12% and 4% respectively and area-delay product (ADP) by 13% and 7% respectively.
利用多数逆变器图改进顺序电路的逻辑优化
多数逆变器图(MIG)是最近引入的一种布尔网络,可以实现高效的逻辑操作。最近的研究表明,与目前的学术和商业工具相比,米格战斗机能够在面积、延迟和功率方面取得重大改进。然而,目前的MIG优化仅限于组合电路,缺少在实际实现中普遍存在的顺序元素。本文首次利用mig模型研究了序列优化机会。所提出的扩展利用了顺序网络中组合电路的MIGs区域和面向深度重写算法的效率。实验结果表明,在OpenCores基准测试套件的平均值上,(1)在考虑与技术无关的评估时,与流行的学术工具相比,我们基于mig的顺序优化在面积和延迟方面分别提高了9%和38%;(2)当使用标准优化+技术映射流程用于具有7nm预测标准单元库的asic时,所提出的顺序优化器在能量延迟积(EDP)方面分别优于学术和商业工具12%和4%,在面积延迟积(ADP)方面分别优于学术和商业工具13%和7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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