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State assignment for sequential circuits using multi-objective genetic algorithm

机译:使用多目标遗传算法的时序电路状态分配

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In this study, a new approach using a multi-objective genetic algorithm (MOGA) is proposed to determine the optimal state assignment with less area and power dissipations for completely and incompletely specified sequential circuits. The goal is to find the best assignments which reduce the component count and switching activity. The MOGA employs a Pareto ranking scheme and produces a set of state assignments, which are optimal in both objectives. The ESPRESSO tool is used to optimise the combinational parts of the sequential circuits. Experimental results are given using a personal computer with an Intel CPU of 2.4 GHz and 2 GB RAM. The algorithm is implemented using C++ and fully tested with benchmark examples. The experimental results show that saving in components and switching activity are achieved in most of the benchmarks tested compared with recent published research.
机译:在这项研究中,提出了一种使用多目标遗传算法(MOGA)的新方法来为完全和不完全指定的时序电路确定面积和功耗较小的最优状态分配。目的是找到减少组件数量和切换活动的最佳分配。 MOGA采用帕累托排序方案,并生成一组状态分配,这两个目标均是最佳的。 ESPRESSO工具用于优化顺序电路的组合部分。使用具有2.4 GHz Intel CPU和2 GB RAM的个人计算机给出了实验结果。该算法使用C ++实现,并通过基准示例进行了全面测试。实验结果表明,与最近发表的研究相比,在大多数测试的基准测试中均实现了组件和开关活动的节省。

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