在 ASIC 中实现布尔函数互不相关的正则表达式稀疏系统时进行与技术无关的优化

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
P. Bibilo, S. Kardash
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引用次数: 0

摘要

目标。本研究考虑了如何选择最佳方法和程序,将其作为数字 ASIC(专用集成电路)稀疏系统的一部分来实现完全定义布尔函数的析取正则表达式(DNF)。对于稀疏 DNF 系统的矩阵形式,指定基本连接词的三元矩阵包含很大比例的未定义值,这些未定义值与布尔输入变量的缺失字面相对应,而指定 DNF 函数中连接词出现次数的布尔矩阵包含很大比例的零值。建议研究在逻辑合成第一阶段执行的各种技术独立逻辑优化方法:DNF 类函数系统的联合最小化、布尔网络形式的多级表示法类的单独和联合最小化、使用互逆协因子的 BDD 表示法,以及将函数系统划分为输入变量数量有限的子系统和 DNF 系统的块覆盖方法,重点是最小化形成覆盖的块的总面积。在 ASIC 中实现布尔函数的稀疏 DNF 系统时,与 DNF 类函数系统联合最小化的传统方法一起,基于香农展开的布尔函数系统多级表示优化方法可用于技术上独立的优化,而整个系统的单独最小化和联合最小化与 DNF 系统的块分割和覆盖以及随后的多级表示最小化相比,效果较差。使用布尔网络最小化表示法进行综合后得到的方案,其面积往往小于使用 BDD 最小化表示法得到的方案。对于数字 ASIC 的设计,首先使用 DNF 系统的块覆盖程序,然后使用基于香农展开的布尔网络最小化形式的程序来最小化多级块表示,这种组合方法的有效性得到了证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Technology independent optimization when implementing sparse systems of disjunctive normal forms of Boolean functions in ASIC
Objectives. The problem of choosing the best methods and programs for circuit implementation as part of digital ASIC (Application-Specific Integrated Circuit) sparse systems of disjunctive normal forms (DNF) of completely defined Boolean functions is considered. For matrix forms of sparse DNF systems, the ternary matrix specifying elementary conjunctions contains a large proportion of undefined values corresponding to missing literals of Boolean input variables, and the Boolean matrix specifying the occurrences of conjunctions in DNF functions contains a large proportion of zero values.Methods. It is proposed to investigate various methods of technologically independent logical optimization performed at the first stage of logical synthesis: joint minimization of systems of functions in the DNF class, separate and joint minimization in classes of multilevel representations in the form of Boolean networks and BDD representations using mutually inverse cofactors, as well as the division of a system of functions into subsystems with a limited number of input variables and the method of block cover of DNF systems, focused on minimizing the total area of the blocks forming the cover.Results. When implementing sparse DNF systems of Boolean functions in ASIC, along with traditional methods of joint minimization of systems of functions in the DNF class, methods for optimizing multilevel representations of Boolean function systems based on Shannon expansions can be used for technologically independent optimization, while separate minimization and joint minimization of the entire system as a whole turn out to be less effective compared with block partitions and coatings of the DNF system and subsequent minimization of multilevel representations. Schemes obtained as a result of synthesis using minimized representations of Boolean networks often have a smaller area than schemes obtained using minimized BDD representations.Conclusion. For the design of digital ASIC, the effectiveness of combined approach is shown, when initially the block coverage programs of the DNF system is used, followed by the use of programs to minimize multilevel block representations in the form of Boolean networks minimized based on Shannon expansion.
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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