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A lightweight dynamic optimization methodology and application metrics estimation model for wireless sensor networks

机译:无线传感器网络的轻量级动态优化方法和应用指标估计模型

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摘要

Technological advancements in embedded systems due to Moore's law have led to the proliferation of wireless sensor networks (WSNs) in different application domains (e.g., defense, health care, surveillance systems) with different application requirements (e.g., lifetime, reliability). Many commercial-off-the-shelf (COTS) sensor nodes can be specialized to meet these requirements using tunable parameters (e.g., processor voltage and frequency) to specialize the operating state. Since a sensor node's performance depends greatly on environmental stimuli, dynamic optimizations enable sensor nodes to automatically determine their operating state in situ. However, dynamic optimization methodology development given a large design space and resource constraints (memory and computational) is an extremely challenging task. In this paper, we propose a lightweight dynamic optimization methodology that intelligently selects initial tunable parameter values to produce a high-quality initial operating state in one-shot for time-critical or highly constrained applications. Further operating state improvements are made using an efficient greedy exploration algorithm, achieving optimal or near-optimal operating states while exploring only 0.04% of the design space on average. We also propose an application metrics estimation model, which is leveraged by our dynamic optimization methodology, to estimate high-level application metrics (e.g., lifetime, throughput) from sensor node tunable parameters and hardware specific internals.
机译:由于摩尔定律,嵌入式系统的技术进步导致无线传感器网络(WSN)在具有不同应用需求(例如寿命,可靠性)的不同应用领域(例如国防,医疗保健,监视系统)中激增。可以使用可调参数(例如,处理器电压和频率)来专门化许多现成的商用(COTS)传感器节点来满足这些要求,以专门化工作状态。由于传感器节点的性能很大程度上取决于环境刺激,因此动态优化使传感器节点能够自动确定其原位运行状态。但是,动态优化方法的开发在很大的设计空间和资源限制(内存和计算)的情况下是一项极富挑战性的任务。在本文中,我们提出了一种轻量级的动态优化方法,该方法可智能地选择初始可调参数值,以针对时间紧迫或高度受限的应用一次性生成高质量的初始运行状态。使用高效的贪婪探索算法可以进一步改善运行状态,从而获得最佳或接近最佳的运行状态,而平均仅探索设计空间的0.04%。我们还提出了一种应用指标估算模型,该模型可通过我们的动态优化方法加以利用,以根据传感器节点可调参数和特定于硬件的内部组件估算高级应用指标(例如,寿命,吞吐量)。

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