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Data Transmission Reduction Schemes in WSNs for Efficient IoT Systems

机译:WSN中高效物联网系统的数据传输减少方案

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摘要

Spatial and temporal correlation among the generated traffic in wireless sensor networks (WSNs) can be exploited in reducing the energy consumption of continuous sensor data collection. Dual prediction (DP) and data compression (DC) schemes rely on the spatio-temporal correlation to reduce the number of transmissions across WSNs, which leads to conserving energy and bandwidth. In this paper, we present both schemes in a two-tier data reduction framework. The DP scheme is used to reduce transmissions between cluster nodes and cluster heads, while the DC scheme is used to reduce traffic between cluster heads and sink nodes. For both schemes, various algorithms will be studied and compared in terms of accuracy, delay, and transmission reduction percentage. For the DP scheme, neural networks (NNs) and long short-term memory networks (LSTMs) are proposed to perform predictions. The training phase of the NNs and LSTMs is done online which is necessary in the DP scheme. The performance will be compared to popular least-mean-square approaches. Regarding the DC scheme, principal component analysis, non-negative matrix factorization, truncated-singular value decomposition, and discrete wavelet transform will be discussed and compared. This paper focuses on comparative analysis of various data reduction algorithms alongside the proposed ones. Finally, design challenges and open research areas for having more transmission reductions will be presented.
机译:无线传感器网络(WSN)中生成的流量之间的时空相关性可用于减少连续传感器数据收集的能耗。双重预测(DP)和数据压缩(DC)方案依赖于时空相关性来减少WSN之间的传输次数,从而节省了能量和带宽。在本文中,我们在两层数据缩减框架中介绍了这两种方案。 DP方案用于减少群集节点和群集头之间的传输,而DC方案用于减少群集头和宿节点之间的流量。对于这两种方案,将研究各种算法,并在准确性,延迟和传输减少百分比方面进行比较。对于DP方案,提出了神经网络(NN)和长短期记忆网络(LSTM)进行预测。 NN和LSTM的训练阶段是在线完成的,这在DP计划中是必需的。该性能将与流行的最小均方方法进行比较。关于DC方案,将讨论和比较主成分分析,非负矩阵分解,截断奇异值分解和离散小波变换。本文着重于对各种数据约简算法以及提出的算法进行比较分析。最后,将提出设计挑战和开放的研究领域,以进一步降低传输。

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