移动传感器网络的协同校准和传感器放置

Xiang Yun, L. Bai, R. Piedrahita, R. Dick, Q. Lv, M. Hannigan, L. Shang
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引用次数: 53

摘要

个人或机器携带的移动传感系统使测量位置和时间相关的环境条件成为可能,例如空气质量和辐射。这些系统中常用的低成本微型传感器容易产生测量漂移,需要偶尔重新校准以提供准确的数据。要求终端用户定期进行手动校准工作将使许多移动传感系统不切实际。因此,我们主张在附近的移动传感器之间使用协作式自动校准,并为这种系统所带来的漂移估计和放置问题提供解决方案。协作校准利用传感器之间的相互作用来调整其校准功能和误差估计。我们使用测量的传感器漂移数据来确定时变漂移误差的性质。然后,我们开发了(1)最优算法和启发式算法,这些算法使用来自多个协作校准事件的信息进行误差补偿;(2)固定传感器放置算法,这可以进一步减少移动个人传感系统中系统范围内的漂移误差。我们使用真实世界和合成的人体运动轨迹来评估所提出的技术。现有最先进的工作平均传感误差为23.2%,而我们的协同校准技术将误差降低到2.2%。适当放置精确的固定传感器可以进一步减少这种误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative calibration and sensor placement for mobile sensor networks
Mobile sensing systems carried by individuals or machines make it possible to measure position- and time-dependent environmental conditions, such as air quality and radiation. The low-cost, miniature sensors commonly used in these systems are prone to measurement drift, requiring occasional re-calibration to provide accurate data. Requiring end users to periodically do manual calibration work would make many mobile sensing systems impractical. We therefore argue for the use of collaborative, automatic calibration among nearby mobile sensors, and provide solutions to the drift estimation and placement problems posed by such a system. Collaborative calibration opportunistically uses interactions among sensors to adjust their calibration functions and error estimates. We use measured sensor drift data to determine properties of time-varying drift error. We then develop (1) both optimal and heuristic algorithms that use information from multiple collaborative calibration events for error compensation and (2) algorithms for stationary sensor placement, which can further decrease system-wide drift error in a mobile, personal sensing system. We evaluated the proposed techniques using real-world and synthesized human motion traces. The most advanced existing work has 23.2% average sensing error, while our collaborative calibration technique reduces the error to 2.2%. The appropriate placement of accurate stationary sensors can further reduce this error.
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