嵌入式系统多目标设计空间探索的可视化

T. Taghavi, A. Pimentel
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引用次数: 24

摘要

现代嵌入式系统具有相互矛盾的设计约束。一方面,这些系统通常针对大规模生产和基于电池的设备,因此应该是廉价和节能的。另一方面,它们需要实现高(实时)性能。这种广泛的设计需求导致了复杂的异构片上系统(SoC)架构。嵌入式系统的复杂性迫使设计人员建模和模拟系统及其组件,以探索广泛的设计选择。这种设计空间的探索在设计的早期阶段尤其需要,因为这个阶段的设计空间是最大的。由于实际问题的设计空间呈指数增长,且需要考虑多个标准,多目标进化算法(moea)通常用于将大的设计空间缩减为有限的点集,并为设计师提供一组与设计标准相关的可交易解决方案。解释搜索结果(例如,帕累托点在哪里),理解它们之间的关系,并分析这种搜索算法如何搜索设计空间,这对设计师来说是非常重要的。为此,本文提出了一种基于树形可视化的交互式可视化工具,以了解MOEA的搜索动态,并可视化最优设计点在设计空间中的位置及其目标值。
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Visualization of Multi-objective Design Space Exploration for Embedded Systems
Modern embedded systems come with contradictory design constraints. On one hand, these systems often target mass production and battery-based devices, and therefore should be cheap and power efficient. On the other hand, they need to achieve high (real-time) performance. This wide spectrum of design requirements leads to complex heterogeneous system-on-chip (SoC) architectures. The complexity of embedded systems forces designers to model and simulate systems and their components to explore the wide range of design choices. Such design space exploration is especially needed during the early design stages, where the design space is at its largest. Due to the exponential design space in real problems and multiple criteria to be considered, multi-objective evolutionary algorithms (MOEAs) are often used to trim down a large design space into a finite set of points and provide the designer a set of tradable solutions with respect to the design criteria. Interpreting the search results (e.g., where are the Pareto points located), understanding their relations and analyzing how the design space was searched by such searching algorithms is of invaluable importance to the designer. To this end, this paper presents a novel interactive visualization tool, based on tree visualization, to understand the search dynamics of a MOEA and to visualize where the optimum design points are located in the design space and what objective values they have.
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