首页> 外文会议>Asia and South Pacific Design Automation Conference 1999 January 18-21, 1999 Wanchai, Hong Kong >A Genetic algorithm based Approach for Multi-Objective Data-Flow Graph Optimization
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A Genetic algorithm based Approach for Multi-Objective Data-Flow Graph Optimization

机译:基于遗传算法的多目标数据流图优化方法

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This paper presents a genetic algorithm based approach for algebraic optimization of behavioral system specifications. We introduce a chromosomal representation of data-flow graphs (DFG) which ensures that the correctness of algebraic transformations realized by the underlying genetic operators selection, recombination, and mutation is always preserved. We present substantial fitness functions for both the minimization of overall resource costs and critical path length. We also demonstrate that, due to their flexibility, genetic algorithms can be simply adapted to different objective functions which is examplarily shown for power optimization. In order to avoid inferior results caused by the counteracting demands on resoruces of different basic blocks, all DFGs of the input description are optimized concurrently.
机译:本文提出了一种基于遗传算法的行为系统规范代数优化方法。我们介绍了数据流图(DFG)的染色体表示形式,可确保始终保留由基础遗传算子选择,重组和突变实现的代数变换的正确性。我们为降低总体资源成本和关键路径长度提供了重要的适应性功能。我们还证明了,由于其灵活性,遗传算法可以简单地适应于不同的目标函数,这些目标函数示例性地显示了功率优化。为了避免由于对不同基本块资源的抵消需求而导致的劣质结果,同时优化了输入描述的所有DFG。

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