DTEC-MAC: Diverse Traffic with Guarantee Energy Consumption for MAC in Wireless Body Area Networks

F. Yazdi, M. Hosseinzadeh, S. Jabbehdari
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引用次数: 3

Abstract

Wireless body area networks (WBAN) are innovative technologies that have been the anticipation greatly promote healthcare monitoring systems. All WBAN included biomedical sensors that can be worn on or implanted in the body. Sensors are monitoring vital signs and then processing the data and transmitting to the central server. Biomedical sensors are limited in energy resources and need an improved design for managing energy consumption. Therefore, DTEC-MAC (Diverse Traffic with Energy Consumption-MAC) is proposed based on the priority of data classification in the cluster nodes and provides medical data based on energy management. The proposed method uses fuzzy logic based on the distance to sink and the remaining energy and length of data to select the cluster head. MATLAB software was used to simulate the method. This method compared with similar methods called iM-SIMPLE and M-ATTEMPT, ERP. Results of the simulations indicate that it works better to extend the lifetime and guarantee minimum energy and packet delivery rates, maximizing the throughput.
DTEC-MAC:无线体域网络中具有保证能耗的多流量MAC
无线身体区域网络(WBAN)是一种创新技术,有望极大地促进医疗保健监测系统的发展。所有WBAN都包括可以佩戴或植入体内的生物医学传感器。传感器正在监测生命体征,然后处理数据并传输到中央服务器。生物医学传感器的能源有限,需要改进设计以管理能源消耗。因此,基于集群节点中数据分类的优先级,提出了DTEC-MAC(Diverse Traffic with Energy Consumption MAC),并基于能量管理提供医疗数据。该方法使用基于下沉距离和剩余能量和数据长度的模糊逻辑来选择簇头。利用MATLAB软件对该方法进行了仿真。该方法与iM SIMPLE和M-ATTEMPT、ERP的类似方法进行了比较。仿真结果表明,它能更好地延长寿命,保证最小的能量和数据包传输速率,最大限度地提高吞吐量。
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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