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首页> 外文期刊>IEEE transactions on mobile computing >Recover Corrupted Data in Sensor Networks: A Matrix Completion Solution
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Recover Corrupted Data in Sensor Networks: A Matrix Completion Solution

机译:在传感器网络中恢复损坏的数据:矩阵完成解决方案

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摘要

Affected by hardware and wireless conditions in WSNs, raw sensory data usually have notable data loss and corruption. Existing studies mainly consider the interpolation of random missing data in the absence of the data corruption. There is also no strategy to handle the successive missing data. To address these problems, this paper proposes a novel approach based on matrix completion (MC) to recover the successive missing and corrupted data. By analyzing a large set of weather data collected from 196 sensors in Zhu Zhou, China, we verify that weather data have the features of low-rank, temporal stability, and spatial correlation. Moreover, from simulations on the real weather data, we also discover that successive data corruption not only seriously affects the accuracy of missing and corrupted data recovery but even pollutes the normal data when applying the matrix completion in a traditional way. Motivated by these observations, we propose a novel Principal Component Analysis (PCA)-based scheme to efficiently identify the existence of data corruption. We further propose a two-phase MC-based data recovery scheme, named MC-Two-Phase, which applies the matrix completion technique to fully exploit the inherent features of environmental data to recover the data matrix due to either data missing or corruption. Finally, the extensive simulations with real-world sensory data demonstrate that the proposed MC-Two-Phase approach can achieve very high recovery accuracy in the presence of successively missing and corrupted data.
机译:受无线传感器网络中硬件和无线条件的影响,原始的感官数据通常具有明显的数据丢失和损坏。现有研究主要考虑在没有数据损坏的情况下对随机缺失数据进行插值。也没有处理连续丢失数据的策略。为了解决这些问题,本文提出了一种基于矩阵完成(MC)的新方法来恢复连续丢失和损坏的数据。通过分析从中国株洲的196个传感器收集的大量天气数据,我们验证了天气数据具有低秩,时间稳定性和空间相关性的特征。此外,通过对真实天气数据的模拟,我们还发现连续的数据损坏不仅严重影响丢失和损坏的数据恢复的准确性,而且在以传统方式应用矩阵补全时甚至会污染正常数据。基于这些观察,我们提出了一种新颖的基于主成分分析(PCA)的方案,可以有效地识别数据损坏的存在。我们进一步提出了一种基于两阶段基于MC的数据恢复方案,称为MC-Two-Phase,该方案运用矩阵完成技术来充分利用环境数据的固有特征来恢复由于数据丢失或损坏而导致的数据矩阵。最后,对真实感官数据的大量仿真表明,在连续丢失和损坏数据的情况下,提出的MC-Two-Phase方法可以实现非常高的恢复精度。

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