基于学习的异构传感器网络自信事件检测方法

Matthew Keally, Gang Zhou, G. Xing, David T. Nguyen, Xin Qi
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引用次数: 9

摘要

无线传感器网络应用,例如用于自然灾害预警、车辆交通监控和监视的应用,对检测或分类事件有严格的准确性要求,并且需要较长的系统寿命。通过定量研究,我们发现现有的事件检测方法在探索部署系统的传感能力和选择合适的传感器以满足用户指定的精度方面面临挑战。事件检测系统还面临着提供一种通用系统的挑战,该系统既能有效地适应环境动态,又能轻松地与各种应用、机器学习方法和传感器模式一起工作。因此,我们提出了Watchdog,这是一个模式无关的事件检测框架,它在运行时聚类正确的传感器以满足用户指定的检测精度,同时显着降低了能耗。看门狗可以使用不同的机器学习技术来学习异构传感器部署的感知能力并满足精度要求。为了解决环境动态问题并确保节能,Watchdog根据需要唤醒和设置睡眠传感器,以满足用户指定的精度。通过对真实车辆检测轨迹数据和IRIS motes建筑交通监控试验台的评估,我们证明了看门狗在满足用户指定的检测精度、节能和环境适应性方面优于现有解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Learning-Based Approach to Confident Event Detection in Heterogeneous Sensor Networks
Wireless sensor network applications, such as those for natural disaster warning, vehicular traffic monitoring, and surveillance, have stringent accuracy requirements for detecting or classifying events and demand long system lifetimes. Through quantitative study, we show that existing event detection approaches are challenged to explore the sensing capability of a deployed system and choose the right sensors to meet user-specified accuracy. Event detection systems are also challenged to provide a generic system that efficiently adapts to environmental dynamics and works easily with a range of applications, machine learning approaches, and sensor modalities. Consequently, we propose Watchdog, a modality-agnostic event detection framework that clusters the right sensors to meet user-specified detection accuracy during runtime while significantly reducing energy consumption. Watchdog can use different machine learning techniques to learn the sensing capability of a heterogeneous sensor deployment and meet accuracy requirements. To address environmental dynamics and ensure energy savings, Watchdog wakes up and puts to sleep sensors as needed to meet user-specified accuracy. Through evaluation with real vehicle detection trace data and a building traffic monitoring testbed of IRIS motes, we demonstrate the superior performance of Watchdog over existing solutions in terms of meeting user-specified detection accuracy, energy savings, and environmental adaptability.
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