关于布尔最小化中突变的使用

P. Fiser, J. Hlavicka
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引用次数: 13

摘要

在原隐含生成方法的基础上,提出了一种新的布尔函数最小化方法。对这些新收录的文字的选择,以及随后对其他一些文字的拒绝以获得主要暗示,都是基于对文字出现频率的启发式研究。不是直接使用这些数据,而是在算法的某些地方使用一些突变。对突变技术及其对所得结果质量的影响进行了评价。实现该方法的BOOM系统对于具有数百个输入变量的函数是有效的,这些函数的值仅在其范围的一小部分被定义。它已经在标准基准测试和随机生成的更大维度的问题上进行了测试。这些实验证明,新算法非常快,并且对于大型电路,它比最先进的ESPRESSO提供更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the use of mutations in Boolean minimization
The paper presents a new method of Boolean function minimization based on an original approach to implicant generation by inclusion of literals. The selection of these newly included literals, as well as the subsequent rejection of some others to obtain prime implicants, is based on heuristics working with the frequency of literal occurrence. Instead of using this data directly, some mutations are used in certain places in the algorithm. The technique of mutations and their influence on the quality of the result obtained is evaluated. The BOOM system implementing the proposed method is efficient especially for functions with several hundreds of input variables, whose values are defined only for a small part of their range. It has been tested both on standard benchmarks and on problems of a much larger dimension, generated randomly. These experiments proved that the new algorithm is very fast and that for large circuits it delivers better results than the state-of-the-art ESPRESSO.
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