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On semantic clustering and adaptive robust regression based energy-aware communication with true outliers detection in WSN

机译:WSN中具有真实异常检测的基于语义聚类和自适应鲁棒回归的能量感知通信

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摘要

To conserve energy and enhance the lifetime of the wireless sensor network (WSN), reducing the amount of data communication by exploiting temporal and spatial correlation of sensed data is well suitable technique. So, instead of sending every data to the destination, it can be worthy of introducing a prediction method to reduce redundant data transmission by exploiting the temporal correlation of sensed data. We show that the prediction accuracy of source data depends not only on the method applied but also on the correctness of the sample data provided by the source nodes. Erroneous sample data (outliers) leads to the wrong prediction. In this paper, we propose an energy efficient SEMantic CLustering (SEMCL) model to mitigate high energy consumption problem in a clustered WSN. Our model produces energy efficient clusters by strong intra-cluster data similarity to exploit spatial correlation of data. We adopt the Robust and Efficient Weighted Least Square method (REWLS) to provide accurate data prediction with negligible errors. Because REWLS method lacks to differentiate true and false outliers and thus to improve further the Quality of Service (QoS) on data accuracy, we propose a separate algorithm, named, True Outlier Detection (TOD). Moreover, to improve the QoS in communications, a reliable backbone network based on the link quality of the data forwarding path has been implemented. Our proposed model has been simulated using real data and compared with the existing techniques to show its efficacy and superiority in terms of QoS on data accuracy, energy consumption, and network lifetime. (C) 2019 Elsevier B.V. All rights reserved.
机译:为了节省能量并延长无线传感器网络(WSN)的寿命,通过利用感测数据的时间和空间相关性来减少数据通信量是非常合适的技术。因此,与其将每个数据都发送到目的地,还不如引入一种预测方法,以通过利用感测数据的时间相关性来减少冗余数据传输。我们表明,源数据的预测准确性不仅取决于所应用的方法,还取决于源节点提供的样本数据的正确性。错误的样本数据(异常值)会导致错误的预测。在本文中,我们提出了一种节能的SEMantic CLustering(SEMCL)模型,以减轻集群式WSN中的高能耗问题。我们的模型通过强大的集群内数据相似性来产生能源高效的集群,以利用数据的空间相关性。我们采用鲁棒且有效的加权最小二乘法(REWLS),以提供可忽略不计的误差的准确数据预测。由于REWLS方法缺乏区分真实和错误离群值的方法,因此无法进一步提高数据准确性上的服务质量(QoS),因此我们提出了一种单独的算法,称为真实离群值检测(TOD)。此外,为了提高通信中的QoS,已经实现了基于数据转发路径的链路质量的可靠骨干网。我们提出的模型已经使用真实数据进行了仿真,并与现有技术进行了比较,以显示其在QoS方面对数据准确性,能耗和网络寿命的有效性和优越性。 (C)2019 Elsevier B.V.保留所有权利。

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