Design space exploration in multi-objective hierarchical SOC design

Muhua Han, Yufeng Xie, Leibo Liu, Shaojun Wei
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引用次数: 0

Abstract

Nowadays, multi-objective hierarchical design methodology has received more attention for its applicability to deal with complex SOC design. Reducing decision data across hierarchy levels is crucial to the hierarchical designs. However, previous works overlooked the importance of this feature and just nested the optimizing procedures of multiple levels. This paper discussed the way to compress decision data across hierarchical levels. Pareto-optimal theory was employed and developed to explore the design space of multi-objective hierarchical system. Furthermore, this paper proved that, under the independence condition, optimization in each hierarchical level could be performed independently. This is the very first time to explore the design space of multi-objective hierarchical system formally, which contributes to the promotion of novel hierarchical partition and synthesis methodology.
多目标分层SOC设计中的设计空间探索
目前,多目标分层设计方法因其对复杂SOC设计的适用性而受到越来越多的关注。减少跨层次的决策数据是分层设计的关键。然而,以往的工作忽略了这一特性的重要性,只是将多个关卡的优化过程嵌套在一起。讨论了跨层次压缩决策数据的方法。运用并发展了帕累托最优理论来探索多目标分层系统的设计空间。进一步证明了在独立条件下,各层次的优化可以独立进行。这是第一次对多目标层次系统的设计空间进行正式探索,有助于推动新的层次划分和综合方法。
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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