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A Collaborative Approach to In-Plance Sensor Calibration

机译:简化传感器校准的协同方法

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Numerous factors contribute to errors in sensor measurements. In order to be useful, any sensor device must be calibrated to adjust its accuracy against the expected measurement scale. In large-scale sensor networks, calibration will be an exceptionally difficult task since sensor nodes are often not easily accessible and manual device-by-device calibration is intractable. In this paper, we present a two-phase post-deployment calibration technique for large-scale, dense sensor deployments. In its first phase, the algorithm derives relative calibration relationships between pairs of co-located sensors, while in the second phase, it maximizes the consistency of the pair-wise calibration functions among groups of sensor nodes. The key idea in the first phase is to use temporal correlation of signals received at neighboring sensors when the signals are highly correlated (I.e. sensors are observing the same phenomenon) to derive the function relating their bias in amplitude. We formulate the second phase as an optimization problem and present an algorithm suitable for localized implementation. We evaluate the performance of the first phase of the algorithm using empirical and simulated data.
机译:众多因​​素造成在传感器测量中的误差。为了有用,任何传感器设备必须被校准,以针对期望的测量刻度调节其精度。在大规模传感器网络,校准将是一个非常困难的任务,因为传感器节点通常不容易接近和手动装置逐设备校准是棘手。在本文中,我们提出了大型的,致密传感器部署的两相展开后的校准技术。在第一阶段中,该算法导出对协同定位的传感器之间的相对校准的关系,而在第二阶段,它最大化的成对校准功能的传感器节点的组之间的一致性。在第一阶段中的关键思想是使用中的相邻传感器时的信号高度相关的接收信号的时间相关性(即传感器被观察同样的现象)来推导与它们在振幅偏差的功能。我们制定了第二阶段为优化问题,并提出适用于部分地区实施的算法。我们评估使用经验和模拟数据的算法的第一阶段的表现。

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