进化约简有序二元决策图

Hossein Moeinzadeh, M. Mohammadi, Hossein Pazhoumand-dar, Arman Mehrbakhsh, Navid Kheibar, N. Mozayani
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引用次数: 4

摘要

降阶二值决策图(ROBDD)是一种节省内存的数据结构,广泛应用于合成、数字系统、验证、测试和VLSI-CAD等领域。一个函数的ROBDD的大小可以通过函数的自变量的数量呈指数增长,这被称为“内存爆炸问题”。变量排序的选择在很大程度上影响OBDD的大小,特别是对于大的输入变量。寻找最优变量排序是一个np完全问题,因此,本文采用遗传算法和粒子群算法两种进化方法来寻找二元决策图中输入变量的最优排序。一些来自LGSynth91的基准测试被用来评估我们的建议方法。结果表明,进化方法能够找到输入变量的最优顺序,并显著减小了ROBDD的大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary-Reduced Ordered Binary Decision Diagram
Reduced ordered binary decision diagram (ROBDD) is a memory-efficient data structure which is used in many applications such as synthesis, digital system, verification, testing and VLSI-CAD. The size of an ROBDD for a function can be increased exponentially by the number of independent variables of the function that is called “memory explosion problem”. The choice of the variable ordering largely influences the size of the OBDD especially for large input variables. Finding the optimal variable ordering is an NP-complete problem, hence, in this paper, two evolutionary methods (GA and PSO) are used to find optimal order of input variable in binary decision diagram. Some benchmarks form LGSynth91 are used to evaluate our suggestion methods. Obtained results show that evolutionary methods have the ability to find optimal order of input variable and reduce the size of ROBDD considerably.
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