A Novel Enriched LASSO Based Compression Technique for Energy Efficient Wireless Sensor Networks

K. Anitha, B. Jaison, M. Nalini, D. ShinyIrene
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Abstract

The capability of transmission in Wireless sensor networks (WSN) is circumscribed due to the precincts in energy utilization, controlled resources of transmission devices and network components. Information compression is taken into account as the best option, because the major part of energy consumed is for transmission of information. Habitually Lossy compression is adopted, since WSN abides some error in the reconstructed signals subjected to some acceptable tolerance. Lasso based models have been ascertained their   capability to effectually compress both multivariate and univariate data. Traditional Lasso considers l1-norm regularization for learning in multi-dimensional data sets and assumes sparsity as model parameters. Lasso prominence on sparsity and deal with the correlation between the data points.  However, model sparsity may be constricting and not essentially the foremost applicable assumption in several problem domains. To eliminate this limitation, an enriched lasso (MLasso) is proposed for compression bearing in mind both sparsity and correlation. In specific the strategy can select data that are having strong features to reconstruct the data and are less correlated between each other. Furthermore, an efficient Alternating Direction Method of Multipliers (ADMM) is adopted to resolve the ensuing sparse non-convex optimization problem. Extensive experiments on diverse datasets provides the proof that MLasso outperforms other similar algorithms for signal compression. Thus the proposed method ensures less energy consumption, decreases power loss and improves the operational life and reliability of network components.
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一种新的基于增强LASSO的节能无线传感器网络压缩技术
无线传感器网络的传输能力受到能量利用、传输设备和网络组件的受控资源等方面的限制。考虑到信息压缩是最好的选择,因为能量消耗的主要部分是信息的传输。由于WSN在可接受的容错范围内保留重构信号的一些误差,因此通常采用有损压缩。基于Lasso的模型已经被证实能够有效地压缩多变量和单变量数据。传统Lasso采用11范数正则化方法对多维数据集进行学习,并以稀疏度作为模型参数。强调稀疏性并处理数据点之间的相关性。然而,模型稀疏性可能会受到限制,并且在一些问题领域中本质上不是最重要的适用假设。为了消除这一限制,提出了一种考虑稀疏性和相关性的浓缩套索(MLasso)压缩方法。具体而言,该策略可以选择具有较强特征的数据来重建数据,并且彼此之间的相关性较小。此外,采用一种高效的交替方向乘法器(ADMM)来解决随之而来的稀疏非凸优化问题。在不同数据集上的大量实验证明,MLasso优于其他类似的信号压缩算法。因此,该方法保证了更少的能量消耗,减少了功率损耗,提高了网络组件的运行寿命和可靠性。
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来源期刊
Advances in Systems Science and Applications
Advances in Systems Science and Applications Engineering-Engineering (all)
CiteScore
1.20
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0.00%
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0
期刊介绍: Advances in Systems Science and Applications (ASSA) is an international peer-reviewed open-source online academic journal. Its scope covers all major aspects of systems (and processes) analysis, modeling, simulation, and control, ranging from theoretical and methodological developments to a large variety of application areas. Survey articles and innovative results are also welcome. ASSA is aimed at the audience of scientists, engineers and researchers working in the framework of these problems. ASSA should be a platform on which researchers will be able to communicate and discuss both their specialized issues and interdisciplinary problems of systems analysis and its applications in science and industry, including data science, artificial intelligence, material science, manufacturing, transportation, power and energy, ecology, corporate management, public governance, finance, and many others.
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