Hardware genetic algorithm optimisation by critical path analysis using a custom VLSI architecture

Q3 Social Sciences South African Computer Journal Pub Date : 2015-07-11 DOI:10.18489/SACJ.V56I1.275
F. Smith, A. Berg
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引用次数: 2

Abstract

This paper propose a Virtual-Field Programmable Gate Array (V-FPGA) architecture that allows direct access to its configuration bits to facilitate hardware evolution, thereby allowing any combinational or sequential digital circuit to be realized. By using the V-FPGA, this paper investigates two possible ways of making evolutionary hardware systems more scalable: by optimizing the system’s genetic algorithm (GA); and by decomposing the solution circuit into smaller, evolvable sub-circuits. GA optimization is done by: omitting a canonical GA’s crossover operator (i.e. by using a 1+λ algorithm); applying evolution constraints; and optimizing the fitness function. A noteworthy contribution this research has made is the in-depth analysis of the phenotypes’ CPs. Through analyzing the CPs, it has been shown that a great amount of insight can be gained into a phenotype’s fitness. We found that as the number of columns in the Cartesian Genetic Programming array increases, so the likelihood of an external output being placed in the column decreases. Furthermore, the number of used LEs per column also substantially decreases per added column. Finally, we demonstrated the evolution of a state-decomposed control circuit. It was shown that the evolution of each state’s sub-circuit was possible, and suggest that modular evolution can be a successful tool when dealing with scalability.
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硬件遗传算法优化关键路径分析使用自定义VLSI架构
本文提出了一种虚拟现场可编程门阵列(V-FPGA)架构,该架构允许直接访问其配置位以促进硬件发展,从而允许实现任何组合或顺序数字电路。通过使用V-FPGA,本文研究了两种可能使进化硬件系统更具可扩展性的方法:通过优化系统的遗传算法(GA);通过将解决方案电路分解成更小的,可进化的子电路。遗传算法优化是通过:省略经典遗传的交叉算子(即通过使用1+λ算法);应用进化约束;优化适应度函数。本研究的一个值得注意的贡献是对表型CPs的深入分析。通过对CPs的分析,已经表明可以对表型的适应度获得大量的见解。我们发现,随着笛卡尔遗传规划数组中列数的增加,在列中放置外部输出的可能性降低。此外,每增加一列,每列使用的le数量也会大大减少。最后,我们演示了状态分解控制电路的演化过程。结果表明,每个状态的子电路的进化是可能的,并表明模块化进化可以成为处理可扩展性的成功工具。
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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来源期刊
South African Computer Journal
South African Computer Journal Social Sciences-Education
CiteScore
1.30
自引率
0.00%
发文量
10
审稿时长
24 weeks
期刊介绍: The South African Computer Journal is specialist ICT academic journal, accredited by the South African Department of Higher Education and Training SACJ publishes research articles, viewpoints and communications in English in Computer Science and Information Systems.
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