Determining Application-specific Peak Power and Energy Requirements for Ultra-low Power Processors

Author:

Cherupalli Hari1,Duwe Henry2,Ye Weidong2,Kumar Rakesh2,Sartori John1

Affiliation:

1. University of Minnesota, Minneapolis , MN, USA

2. University of Illinois at Urbana-Champaign, Urbana-Champaign, IL, USA

Abstract

Many emerging applications such as IoT, wearables, implantables, and sensor networks are power- and energy-constrained. These applications rely on ultra-low-power processors that have rapidly become the most abundant type of processor manufactured today. In the ultra-low-power embedded systems used by these applications, peak power and energy requirements are the primary factors that determine critical system characteristics, such as size, weight, cost, and lifetime. While the power and energy requirements of these systems tend to be application-specific, conventional techniques for rating peak power and energy cannot accurately bound the power and energy requirements of an application running on a processor, leading to over-provisioning that increases system size and weight. In this paper, we present an automated technique that performs hardware-software co-analysis of the application and ultra-low-power processor in an embedded system to determine application-specific peak power and energy requirements. Our technique provides more accurate, tighter bounds than conventional techniques for determining peak power and energy requirements, reporting 15% lower peak power and 17% lower peak energy, on average, than a conventional approach based on profiling and guardbanding. Compared to an aggressive stressmark-based approach, our technique reports power and energy bounds that are 26% and 26% lower, respectively, on average. Also, unlike conventional approaches, our technique reports guaranteed bounds on peak power and energy independent of an application's input set. Tighter bounds on peak power and energy can be exploited to reduce system size, weight, and cost.

Funder

Defense Advanced Research Projects Agency

National Science Foundation

Semiconductor Research Corporation

Microelectronics Advanced Research Corporation

Center for Future Architecture Research

STARnet

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design,Software

Reference49 articles.

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3. Microcontroller Sales Regain Momentum After Slump. www.icinsights.com/news/bulletins/Microcontroller-Sales-Regian-Momentum-After-Slump. Microcontroller Sales Regain Momentum After Slump. www.icinsights.com/news/bulletins/Microcontroller-Sales-Regian-Momentum-After-Slump.

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