Conditional Training Based GM and GM-OPELM Data Fusion Schemes in Wireless Sensor Networks

Lei Yang, Qing Zhao, Y. Jing
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引用次数: 2

Abstract

As a key infrastructure of Internet of Things (loT), wireless sensor networks (WSN) can be utilized in a wide range of applications. The prediction based data fusion methods provide effective tools to reduce the amount of data transmissions while maintaining prediction accuracy. Recently a grey prediction model (GM) combining optimally-pruned extreme learning machine (OPELM) data fusion method has been proposed and shown to have good performance. However, the existing GM- OPELM method performs model training and broadcasting before each prediction, resulting in high complexity and energy consumption. In this paper the conditional training based GM (CT-GM) and GM-OPELM (CT-GM-OPELM) are proposed. By introducing an error threshold, the algorithms only perform model training when the prediction error is beyond the threshold. Compared with existing GM and GM-OPELM methods, the CT- GM and CT-GM-OPELM methods not only can achieve the higher rate of acceptable prediction and better time efficiency but also has significant reduction in the energy consumption on model training and transmissions.
无线传感器网络中基于条件训练的GM和GM- opelm数据融合方案
无线传感器网络作为物联网的关键基础设施,有着广泛的应用前景。基于预测的数据融合方法为在保持预测精度的同时减少数据传输量提供了有效的工具。近年来,提出了一种结合最优修剪极限学习机(OPELM)数据融合方法的灰色预测模型(GM),并取得了良好的效果。然而,现有的GM- OPELM方法在每次预测之前都要进行模型训练和广播,这使得预测的复杂度和能耗都很高。本文提出了基于GM (CT-GM)和GM- opelm (CT-GM- opelm)的条件训练方法。通过引入误差阈值,算法只在预测误差超过阈值时才进行模型训练。与现有的GM和GM- opelm方法相比,CT-GM和CT-GM- opelm方法不仅可以实现更高的可接受预测率和更好的时间效率,而且显著降低了模型训练和传输的能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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