Evaluating polynomial regression based data aggregation in body area networks

A. Knox, Suryadip Chakraborty, D. Agrawal
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引用次数: 4

Abstract

In recent years, more and more biological sensors are being connected wirelessly. This makes them much more versatile and allows a greater degree of mobility to the wearer. However, there are downsides to the move to wireless. In wireless body area sensor network (WBASNs), power consumption and storage limitations are major obstacles that need to be addressed. Increasing capacity often means increasing weight and cost, especially when batteries are concerned. Therefore, it is important to minimize the power and storage requirements as much as possible. One approach to this is through aggregation. By having sensors report their data to a cluster head (CH), their information can be combined and volume of transmitted data reduced. Less data means more information can be stored before that data needs to be offloaded. In addition less data means fewer packets need to be sent increasing the life of the sensor. Polynomial regression can be used to create a formula that approximates this information. This paper assesses the effectiveness of this type of regression as applied to biological data of patients. This is done first by measuring the degree of compression (compression ratio). Then we evaluate the accuracy of the polynomial (correlation coefficient) for different types of patients' data. Lastly it compares these results to existing models in order to assess its effectiveness as an aggregation technique.
基于多项式回归的体域网络数据聚合评价
近年来,越来越多的生物传感器被无线连接。这使得他们更多功能,并允许更大程度的机动性佩戴者。然而,向无线移动也有缺点。在无线体域传感器网络(WBASNs)中,功耗和存储限制是需要解决的主要障碍。容量的增加通常意味着重量和成本的增加,尤其是在电池方面。因此,尽可能减少功率和存储需求是非常重要的。一种方法是通过聚合。通过让传感器向簇头(CH)报告它们的数据,可以将它们的信息组合起来,并减少传输的数据量。更少的数据意味着在数据需要卸载之前可以存储更多的信息。此外,更少的数据意味着更少的数据包需要发送增加传感器的寿命。多项式回归可以用来创建一个近似于这些信息的公式。本文评估了这类回归应用于患者生物学数据的有效性。这首先通过测量压缩程度(压缩比)来完成。然后,我们对不同类型的患者数据评估多项式(相关系数)的准确性。最后,将这些结果与现有模型进行比较,以评估其作为聚合技术的有效性。
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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