在MDD最小化期间动态重新编码

Frank Schmiedle, Wolfgang Günther, R. Drechsler
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引用次数: 10

摘要

多值决策图(mdd)是二进制决策图(bdd)的推广。它们通常允许具有多值输入变量的函数的有效表示,类似于二进制情况下的bdd。因此,它们适用于集成电路的合成和验证。以节点数计算的MDD大小取决于所使用的变量顺序,从线性到指数不等。在所有这些应用程序中,最小化mdd是至关重要的。在许多情况下,多值变量是由一定数量的二进制变量组成的,因此多值输入是通过对二进制变量进行分组而产生的。这些组的选择,也就是要合并哪些变量的决定,对MDD的大小有巨大的影响。最近提出了在开始MDD最小化之前找到变量分组的技术。本文提出了一种利用重编码的新方法,即动态变量分组。在最小化mdd之前,我们不选择一个固定的变量组,而是允许在最小化过程中改变要一起考虑的二进制变量。这是可能的,因为mdd是在bdd之上模拟的。这样,底层二进制变量在整个最小化过程中都是可访问的。详细介绍了该技术,并给出了实验结果,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic re-encoding during MDD minimization
Multi-valued decision diagrams (MDDs) are a generalization of binary decision diagrams (BDDs). They often allow efficient representation of functions with multi-valued input variables similar to BDDs in the binary case. Therefore they are suitable for several applications in synthesis and verification of integrated circuits. MDD sizes counted in number of nodes vary from linear to exponential dependent on the variable ordering used. In all these applications, minimization of MDDs is crucial. In many cases, multi-valued variables are composed by a certain number of binary variables, and so the multi-valued inputs arise by grouping binary variables. The selection of these groups, that is, the decision which variables to merge, has enormous impact on MDD sizes. Techniques for finding variable groupings before starting MDD minimization have been proposed recently. In this paper we present a new method that uses re-encoding, i.e. dynamic variable grouping. We don't choose one fixed variable grouping before minimizing MDDs, but allow to change the binary variables to be considered together during the minimization process. This is possible since MDDs are simulated on top of BDDs. By this, the underlying binary variables remain accessible throughout the minimization process. This technique is described in detail and we also show experimental results that demonstrate the efficiency of our approach.
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