部分和完全未校准阵列传感器网络的联合定位与校准

Jannik Springer, M. Oispuu, W. Koch
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引用次数: 0

摘要

如果不补偿实际阵列响应与模拟阵列响应之间的不匹配,高分辨率测向方法的性能会显著下降。利用机会源,自校准技术联合估计任何未知的扰动和源参数。在这项工作中,我们提出了一种传感器网络的自校准方法,该方法将众所周知的纯方位定位方法和现有的基于特征结构的自校准技术相结合,充分利用了源位置。通过数值实验证明,该方法可以唯一地估计出多个传感器的增益和相位扰动以及运动源的位置。我们概述了Cramer-Rao下界,并证明了该方法是有效的。最后,将自校正方法应用于田间试验采集的测量数据。
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Joint Localization and Calibration in Partly and Fully Uncalibrated Array Sensor Networks
The performance of high-resolution direction finding methods can significantly degrade if mismatches between the actual array response and the modeled array response are not compensated. Using sources of opportunity, self-calibration techniques jointly estimate any unknown perturbations and source parameters. In this work, we propose a self-calibration method for sensor networks that fully exploits the source position by combining the well-known bearings-only localization method and existing eigenstructure based self-calibration techniques. Using numerical experiments we demonstrate that the proposed method can uniquely estimate the gain and phase perturbations of multiple sensors as well as the positions of a moving source. We outline the Cramer-Rao lower bound and´ show that the method is efficient. Finally, the self-calibration method is applied to measurement data collected in field trials.
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