基于灵敏度分析的MPSoC性能和能量预测模型

Hongwei Wang, Ziyuan Zhu, Jinglin Shi, Yongtao Su
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引用次数: 1

摘要

多处理器片上系统(MPSoC)已经成为嵌入式处理器架构的事实上的标准。然而,MPSoC的架构设计空间是如此之大,以至于要详尽地模拟所有设计点来评估它们的设计指标(如性能,能量等)是费时的。因此,许多架构师采用预测建模方法来快速估计设计点的设计度量。这些技术中的一个基本任务是输入变量的选择。预测模型的输入变量由体系结构参数及其相互作用组成,但并不是所有的输入变量都应该包含在模型中。在模型中加入重要的输入变量可以提高模型的预测精度,但加入不重要的输入变量会增加过拟合的风险。因此,如何识别和包含重要的输入变量,同时排除不重要的输入变量是一个很大的挑战。在本文中,我们提出了一种自适应组件选择和平滑算子(ACOSSO)回归技术,用于MPSoC性能和能量的预测建模。ACOSSO回归技术允许同时进行全局敏感性分析(执行输入变量选择)和模型计算,通过解决l1范数惩罚最小二乘拟合问题。我们将提出的ACOSSO模型与最先进的限制三次样条(RCS)模型和两个增强的RCS模型进行比较,并将它们应用于MPSoC性能和能量估计问题。一个增强的RCS模型使用基于ACOSSO回归的灵敏度分析技术进行输入变量选择,另一个使用逐步回归建模技术。实验结果表明,ACOSSO回归模型比其他模型具有更好的预测精度,基于ACOSSO回归的敏感性分析结果对RCS建模也有一定的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensitivity Analysis Based Predictive Modeling for MPSoC Performance and Energy Estimation
Multi-processor system on chip (MPSoC) has been a de facto standard for embedded processor architectures. However, the architectural design space of MPSoC is so huge that it is time prohibitive to exhaustively simulate all design points to evaluate their design metrics (such as performance, energy, etc.). Thus, many architects have resorted to predictive modeling methods to fast estimate the design metrics of design points. An essential task in these techniques is input variable selection. Input variables of the predictive model consist of architecture parameters and their interactions, but not all input variables should be included in model. The inclusion of significant input variables in model can improve the prediction accuracy of model, but the inclusion of insignificant input variables will increase the risk of over fitting. So, how to identify and include the significant input variables while exclude the insignificant ones is a great challenge. In this paper, we propose an adaptive component selection and smoothing operator (ACOSSO) regression technique for predictive modeling of MPSoC performance and energy. The ACOSSO regression technique allows simultaneous global sensitivity analysis (which performs input variable selection) and model computing through solving an L1-norm penalized least squares fitting problem. We compare the proposed ACOSSO model with the state-of-the-art restricted cubic splines (RCS) model and two enhanced RCS models by applying them to an MPSoC performance and energy estimation problem. One enhanced RCS model performs input variable selection by use of ACOSSO regression based sensitivity analysis technique and the other by a stepwise regression modeling technique. Experimental results show that the ACOSSO regression model has better prediction accuracy than the other models, and the results of ACOSSO regression based sensitivity analysis are also useful for RCS modeling.
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