College of Computer Science and Technology, Shanghai University of Electric Power, Shanghai, P.R.China.
Math Biosci Eng. 2019 May 22;16(5):4526-4545. doi: 10.3934/mbe.2019226.
Wireless sensor networks (WSNs) are usually used to helps many basic scientific works to gather and observe environmental data, whose completeness and accuracy are the key to ensuring the success of scientific works. However, due to a lot of noise, collision and unreliable data link, data loss and damage in WSNs are rather common. Although some existing works, e.g. interpolation methods or prediction methods, can recover original data to some extent, they maybe provide an unsatisfac-tory accuracy when the missing data becomes large. To address this problem, this paper proposes a new reliable data transmission scheme in WSNs by using data decomposition and ensemble recovery mechanism. Firstly, the original data are collected by sensor nodes and then are expanded and split into multiple data shares by using multi-ary Vandermonde matrix. Subsequently, these data shares are transmitted respectively to source node via the sensor networks, which is made up of a large number of sensor nodes. Since each share contains data redundancy, the source node can reconstruct the original data even if some data shares are damaged or lost during delivery. Finally, extensive simulation experi-ments show that the proposed scheme outperforms significantly existing solutions in terms of recovery accuracy and robustness.
无线传感器网络(WSNs)通常用于帮助许多基础科学工作来收集和观察环境数据,其完整性和准确性是确保科学工作成功的关键。然而,由于存在大量的噪声、冲突和不可靠的数据链路,WSNs 中的数据丢失和损坏是相当常见的。尽管一些现有的工作,例如插值方法或预测方法,可以在一定程度上恢复原始数据,但当缺失数据较大时,它们的准确性可能会令人不满意。为了解决这个问题,本文提出了一种新的可靠数据传输方案,通过使用数据分解和集成恢复机制在 WSNs 中实现。首先,传感器节点收集原始数据,然后使用多元范德蒙德矩阵进行扩展和分割成多个数据份额。随后,这些数据份额分别通过由大量传感器节点组成的传感器网络传输到源节点。由于每个份额都包含数据冗余,因此即使在传输过程中某些数据份额损坏或丢失,源节点也可以重建原始数据。最后,广泛的仿真实验表明,与现有解决方案相比,所提出的方案在恢复准确性和鲁棒性方面具有显著的优势。