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A Novel Evolutionary Technique for Multi-objective Power, Area and Delay Optimization in High Level Synthesis of Datapaths

机译:数据路径高级综合中用于多目标功率,面积和延迟优化的新进化技术

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The use of multi-objective approaches in High Level Synthesis has been gaining lot of interest in recent years since the major design objectives such as area, delay and power are mutually conflicting, thereby necessitating trade-offs between different objectives. This paper proposes a methodology for area, power and delay optimization using the Non-dominated Sorting Genetic Algorithm II (NSGA II). A metric based technique has been used to determine the likelihood of a schedule to yield low power solutions during binding. Actual power numbers are not determined since this is computationally expensive. The methodology has been evaluated on standard benchmark Data-Flow Graphs (DFGs) and results indicate that it yields improved solutions with better diversity when compared to a weighted sum GA approach. For the IIR benchmark, it was observed that the NSGA II was able to converge to the true Pareto front obtained from exhaustive search.
机译:近年来,由于区域,延迟和权力等主要的设计目标,近年来,在高水平综合中使用多目标方法已经获得了很多兴趣,从而相互冲突,从而需要不同目标之间的权衡。本文采用了使用非主导分类遗传算法II(NSGA II)的区域,功率和​​延迟优化方法。基于度量的技术已经用于确定时间表期间在绑定期间产生低功率解的可能性。实际功率编号未确定,因为这是计算昂贵的。在标准基准数据流图(DFG)上评估了该方法,结果表明,与加权和GA方法相比,它产生了更好的多样性的改进解决方案。对于IIR基准,观察到NSGA II能够收敛于从详尽搜索获得的真正的帕累托前线。

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