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Gradient-based adaptive modeling for loT data transmission reduction

机译:基于梯度的批次数据传输减少的自适应建模

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Spatial and temporal correlation between sensor observations in an Internet of Things environment can be exploited to eliminate unnecessary transmissions. Transmitting less data certainly contributes to meet the growing need for energy-saving and robust transmissions, thus prolong the lifespan of the entire WSN. Spatiotemporal correlation-based dual prediction (DP) and data compression (DC) schemes aim to reduce the amount of data transmission while ensuring data accuracy. In practice, however, the existing methods restrict the stability of the system when the model hyper-parameters are uncertain. Thus adaptive model has lately attracted extensive attention for the development of resource-constrained WSN. In this paper, we propose a gradient-based adaptive model that implements both schemes in a two-tier data reduction framework. To the best of our knowledge, the proposed scheme is the first attempt to introduce adaptiveness into both the DP and DC schemes by using a simple gradient optimization method. Gradient-based Optimal Step-size LMS (GO-LMS) is introduced to make the DP aspects adaptive, while a Gradient-based Adaptive PCA (GA-PCA) approach is used for the DC aspects. The Barzilai-Borwein method is incorporated into the gradient optimization to enable adaptive computation of the step-size for each iteration. Through extensive simulations, the developed framework was found to outperform other state-of-the-art schemes in terms of both the transmission reduction ratio and data recovery accuracy.
机译:可以利用在物联网上的传感器观测之间的空间和时间相关性来利用来消除不必要的传输。传输较少的数据肯定有助于满足节能和稳健传输的需求,因此延长整个WSN的寿命。基于时空相关的双预测(DP)和数据压缩(DC)方案旨在减少数据传输量,同时确保数据准确性。然而,在实践中,当模型超参数不确定时,现有方法限制了系统的稳定性。因此,自适应模型最近引起了广泛关注资源受限WSN的发展。在本文中,我们提出了一种基于梯度的自适应模型,其实现了两层数据减少框架中的两个方案。据我们所知,所提出的方案是首次尝试通过使用简单的梯度优化方法将适应性引入DP和DC方案。介绍梯度的最佳步长LMS(GO-LMS)以使DP方面自适应,而基于梯度的自适应PCA(GA-PCA)方法用于DC方面。 Barzilai-Borwein方法被纳入梯度优化,以实现对每个迭代的阶梯大小的自适应计算。通过广泛的模拟,发现开发的框架在传输减少比和数据恢复精度方面以其他最先进的方案优于其他最先进的方案。

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