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首页> 外文期刊>VLSI Design >A Novel Framework for Applying Multiobjective GA and PSO Based Approaches for Simultaneous Area, Delay, and Power Optimization in High Level Synthesis of Datapaths
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A Novel Framework for Applying Multiobjective GA and PSO Based Approaches for Simultaneous Area, Delay, and Power Optimization in High Level Synthesis of Datapaths

机译:一种基于多目标GA和PSO的方法的新框架,用于在数据路径的高级综合中同时进行面积,延迟和功率优化

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摘要

High-Level Synthesis deals with the translation of algorithmic descriptions into an RTL implementation. It is highly multi-objective in nature, necessitating trade-offs between mutually conflicting objectives such as area, power and delay. Thus design space exploration is integral to the High Level Synthesis process for early assessment of the impact of these trade-offs. We propose a methodology for multi-objective optimization of Area, Power and Delay during High Level Synthesis of data paths from Data Flow Graphs (DFGs). The technique performs scheduling and allocation of functional units and registers concurrently. A novel metric based technique is incorporated into the algorithm to estimate the likelihood of a schedule to yield low-power solutions. A true multi-objective evolutionary technique, "Nondominated Sorting Genetic Algorithm II" (NSGA II) is used in this work. Results on standard DFG benchmarks indicate that the NSGA II based approach is much faster than a weighted sum GA approach. It also yields superior solutions in terms of diversity and closeness to the true Pareto front. In addition a framework for applying another evolutionary technique: Weighted Sum Particle Swarm Optimization (WSPSO) is also reported. It is observed that compared to WSGA, WSPSO shows considerable improvement in execution time with comparable solution quality.
机译:高级综合处理将算法描述转换为RTL实现。它本质上是高度多目标的,因此需要在相互冲突的目标(例如面积,功率和延迟)之间进行权衡。因此,设计空间探索是高级综合过程不可或缺的部分,可用于早期评估这些折衷的影响。我们提出了一种从数据流图(DFG)进行数据路径的高级综合时,对面积,功率和延迟进行多目标优化的方法。该技术同时执行功能单元和寄存器的调度和分配。一种新颖的基于度量的技术已合并到该算法中,以估计生成低功耗解决方案的时间表的可能性。这项工作使用了真正的多目标进化技术,即“非分类排序遗传算法II”(NSGA II)。标准DFG基准的结果表明,基于NSGA II的方法比加权总和GA方法要快得多。在多样性和与真正的帕累托前沿的紧密度方面,它还提供了出色的解决方案。此外,还报告了应用另一种进化技术的框架:加权和粒子群优化(WSPSO)。可以看出,与WSGA相比,WSPSO在执行时间上具有可观的解决方案质量,可观的改进。

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