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首页> 外文期刊>Journal of network and computer applications >When RSSI encounters deep learning: An area localization scheme for pervasive sensing systems
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When RSSI encounters deep learning: An area localization scheme for pervasive sensing systems

机译:当rssi遇到深度学习时:普及感测系统的区域定位方案

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摘要

Localization has long been considered as a crucial research problem for pervasive sensing systems, especially with the arrival of big data era. Various techniques have been proposed to improve the localization accuracy by leveraging common wireless signals, such as radio signal strength indication (RSSI), collected from sensors placed in pervasive environments. However, the measured signal value can be easily affected by noise caused by physical obstacles in such sensing environment, which in turn compromises the localization performance. Hence, we present a novel RSSI-based area localization scheme using deep neural network (DNN) to explore the underlying correlation between the RSSI data and the respective sensor placement to achieve a superior localization performance. Moreover, to cope with the sensor data loss issue that commonly occurs during wireless sensor network (WSN) operation, an algorithm is designed to reconstruct the missing data for respective sensors in order to preserve the performance of DNN localization model. The effectiveness of the proposed scheme is verified with a real-world WSN testbed deployed inside an office building. The results demonstrate that the proposed scheme provides satisfactory prediction accuracy in area localization for pervasive sensing systems, regardless of the data loss issue that occurs with the respective sensors.
机译:本土化长期被认为是普遍感的传感系统的关键研究问题,特别是随着大数据时代的到来。已经提出了通过利用诸如无线电信号强度指示(RSSI)的公共无线信号来改善定位精度,从放置在普及环境中的传感器收集。然而,测量的信号值可以通过这种感测环境中的物理障碍引起的噪声容易地影响,这反过来损害了本地化性能。因此,我们介绍了一种使用深神经网络(DNN)的基于RSSI的区域定位方案来探讨RSSI数据和各个传感器放置之间的潜在相关性,以实现优越的本地化性能。此外,为了应对在无线传感器网络(WSN)操作期间通常发生的传感器数据丢失问题,算法被设计为重建各个传感器的缺失数据,以便保留DNN定位模型的性能。拟议方案的有效性通过部署在办公大楼内部的现实世界WSN测试效果。结果表明,该方案为普遍感传感系统的区域定位提供了令人满意的预测准确性,无论各个传感器发生的数据丢失问题如何。

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