Energy efficient GPS acquisition with Sparse-GPS

P. Misra, W. Hu, Yuzhe Jin, Jie Liu, Amanda Souza de Paula, Niklas Wirström, T. Voigt
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引用次数: 43

Abstract

Following rising demands in positioning with GPS, low-cost receivers are becoming widely available; but their energy demands are still too high. For energy efficient GPS sensing in delay-tolerant applications, the possibility of offloading a few milliseconds of raw signal samples and leveraging the greater processing power of the cloud for obtaining a position fix is being actively investigated. In an attempt to reduce the energy cost of this data offloading operation, we propose Sparse-GPS: a new computing framework for GPS acquisition via sparse approximation. Within the framework, GPS signals can be efficiently compressed by random ensembles. The sparse acquisition information, pertaining to the visible satellites that are embedded within these limited measurements, can subsequently be recovered by our proposed representation dictionary. By extensive empirical evaluations, we demonstrate the acquisition quality and energy gains of Sparse-GPS. We show that it is twice as energy efficient than offloading uncompressed data, and has 5-10 times lower energy costs than standalone GPS; with a median positioning accuracy of 40 m.
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利用稀疏GPS进行高能效GPS采集
随着GPS定位需求的增加,低成本的接收器变得越来越普遍;但他们的能源需求仍然太高。对于延迟容忍应用中的高能效GPS传感,正在积极研究卸载几毫秒原始信号样本并利用云的更大处理能力来获得定位的可能性。为了降低这种数据卸载操作的能量成本,我们提出了一种新的基于稀疏逼近的GPS获取计算框架——稀疏GPS。在此框架下,GPS信号可以通过随机集成进行有效压缩。稀疏的采集信息,与嵌入在这些有限测量中的可见卫星有关,随后可以通过我们提出的表示字典恢复。通过广泛的经验评估,我们证明了稀疏gps的捕获质量和能量增益。我们表明,它的能源效率是卸载未压缩数据的两倍,能源成本比独立GPS低5-10倍;定位精度中位数为40米。
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