Mohammad Hamdan, Hisham A. Shehadeh, Qusai Y. Obeidat
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引用次数: 4
摘要
无线体域网络(Wireless Body Area Network, WBAN)面临的最大挑战是能量消耗,因为它使用有限的电池等资源来工作,而且由于它用于传输心电图(ECG)等患者健康状态的实时参数,因此端到端延迟。本文提出并讨论了多目标问题的建模方法。第一个目标是最小化端到端延迟;第二个目标是根据数据包的有效负载大小最大化网络的能源效率。我们使用jMetal使用三种遗传算法(NSGA-II, SPEA-II和OMOPSO)来测试问题,并在它们之间进行比较。
Multi - Objective Optimization of Electrocardiogram Monitoring Network for Elderly Patient in Home
The most challenges of Wireless Body Area Network (WBAN) are energy consumption because its works using limited resource like battery and end-to-end delay because it is used to transmit real time parameters of patients' health status like Electrocardiogram (ECG). In this paper we present and discuss the modeling of a multi objective problem. The first objective is the minimization of the end to end delay; the second objective is maximization of the energy efficiency of the network depending on packets payload size. We use jMetal to test the problem using three genetic algorithms (NSGA-II, SPEA-II and OMOPSO) and we compare between them.