一种程序性方法预测评估物联网系统中电路级自适应的电能质量权衡

IF 1.9 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Jaro De Roose, M. Andraud, M. Verhelst
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引用次数: 0

摘要

物联网传感器节点的不断小型化需要不断减少电池尺寸,从而在低功耗操作方面产生更严格的需求。在过去的几十年里,已经引入了各种各样的技术来实现这种功耗的降低。许多涉及某种形式的离线可重新配置性(OfC),即在部署前配置节点的能力,或在线自适应性(OnA),即也在运行时重新配置节点的功能。然而,固有的设计权衡通常会导致临时的OnA和OfC,这会阻止在投资于在特定节点上实施之前评估每种方法所带来的不同收益和成本。为了解决这个问题,在这项工作中,我们提出了一种通用的预测评估方法,使我们能够在任何设计之前在全球范围内评估OfC和OnA。实际上,该方法基于优化数学,以快速有效地评估OnA相对于OfC的潜在利益和成本。因此,在特定的应用场景下,这种通用方法可以在实现之前确定哪种类型的解决方案将消耗最少的功率。我们将该方法应用于三项自适应物联网系统研究,以证明所引入方法的能力,深入了解自适应机制,并快速优化OfC–OnA自适应,即使在具有许多自适应变量的场景下也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Procedural Method to Predictively Assess Power-Quality Trade-Offs of Circuit-Level Adaptivity in IoT Systems
The constant miniaturization of IoT sensor nodes requires a continuous reduction in battery sizes, leading to more stringent needs in terms of low-power operation. Over the past decades, an extremely large variety of techniques have been introduced to enable such reductions in power consumption. Many involve some form of offline reconfigurability (OfC), i.e., the ability to configure the node before deployment, or online adaptivity (OnA), i.e., the ability to also reconfigure the node during run time. Yet, the inherent design trade-offs usually lead to ad hoc OnA and OfC, which prevent assessing the varying benefits and costs each approach implies before investing in implementation on a specific node. To solve this issue, in this work, we propose a generic predictive assessment methodology that enables us to evaluate OfC and OnA globally, prior to any design. Practically, the methodology is based on optimization mathematics, to quickly and efficiently evaluate the potential benefits and costs from OnA relative to OfC. This generic methodology can, thus, determine which type of solution will consume the least amount of power, given a specific application scenario, before implementation. We applied the methodology to three adaptive IoT system studies, to demonstrate the ability of the introduced methodology, bring insights into the adaptivity mechanics, and quickly optimize the OfC–OnA adaptivity, even under scenarios with many adaptivity variables.
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