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RFID tag oriented data allocation method using artificial immune network

机译:基于人工免疫网络的rfid标签定向数据分配方法

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Radio frequency identification (RFID) enables a seamless link between the patient data stored on RFID tag and the medical monitor, which provides an instant access to the relevant information for healthcare services. With the patient tag, incorrect data inputs can be prevented and errors in patient treatment can be detected in real-time. However, only important data items can be allocated to a RFID tag with the limited memory. In general, the RFID tag oriented data allocation problem can be mitigated by minimizing the total value of “unexplained” data off tag (TVUD) which is related to the memory capacity and the correlation matrix. Artificial immune network is an emerging heuristic algorithm that is broadly used to solve scientific researches and engineering problems. This paper formulates the RFID tag oriented data allocation problem as a nonlinear knapsack problem and proposes an artificial immune network (DA-aiNet) to solve this optimization problem. A series of numerical experiments are arranged to investigate the effects of memory capacity and correlation matrix. Further experiments are used to make some comparisons between the proposed DA-aiNet and the other existing algorithms. The experimental results indicate that this proposed DA-aiNet is more efficient in minimizing TVUD than the particle swarm optimization and the genetic algorithm.
机译:射频识别(RFID)可实现RFID标签上存储的患者数据与医疗监护仪之间的无缝链接,从而为医疗服务提供对相关信息的即时访问。使用患者标签,可以防止错误的数据输入,并且可以实时检测到患者治疗中的错误。但是,只有重要的数据项才能通过有限的内存分配给RFID标签。通常,可以通过使与存储器容量和相关矩阵有关的“无法解释的”数据不带标签的数据(TVUD)的总值最小化,来缓解面向RFID标签的数据分配问题。人工免疫网络是一种新兴的启发式算法,广泛用于解决科学研究和工程问题。本文将面向RFID标签的数据分配问题表述为非线性背包问题,并提出了一种人工免疫网络(DA-aiNet)来解决该优化问题。安排了一系列数值实验来研究存储容量和相关矩阵的影响。进一步的实验用于在提出的DA-aiNet和其他现有算法之间进行一些比较。实验结果表明,与粒子群算法和遗传算法相比,提出的DA-aiNet在最小化TVUD方面更为有效。

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