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Dynamic power optimization for secondary wearable biosensors in e-healthcare leveraging cognitive WBSNs with imperfect spectrum sensing

机译:E-HealthCare中的次级可穿戴生物传感器的动态功率优化利用具有不完全频谱感测的认知WBSN

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The integration of cognitive radio with e-healthcare systems assisted by wireless body sensor networks (WBSNs) has been regarded as an enabling approach for a new generation of pervasive healthcare services, to provide differentiated quality of service requirements and avoid harmful electromagnetic interference to primary medical devices (PMDs) over the crowded radio spectrum. Due to the sharing spectrum bands with PMDs in e-healthcare scenario using cognitive WBSNs (CWBSNs), efficient transmit power control and optimization strategies for resource-constrained secondary wearable biosensors (SWBs) play a key role in controlling the inter-network interference and improving the energy efficiency. This paper investigates the problem of dynamic power optimization for SWBs in e-healthcare leveraging CWBSNs with practical limitations, e.g., imperfect spectrum sensing and quality of physiological data sampling. We develop a distributed optimization framework of dynamic power optimization via the theory of differential game, by jointly considering utility maximization and quality of physiological data sampling for every SWB, while satisfying the evolution law of energy consumption in SWB's battery. With the non-cooperation and cooperation relations for all SWBs in mind, we transform the differential game model into two subproblems, namely, utility maximization problem and total utility maximization problem. Utilizing Bellman's dynamic programming, we derive a non-cooperative optimal solution for power optimization as a Nash equilibrium point for the utility maximization problem posed by competitive scenario. By exploiting Pontryagin's maximum principle, a cooperative optimal solution is obtained for the total utility maximization problem, wherein all SWBs fully cooperate to obtain the highest total utilities. Building upon the analytical results, the actual utility distributed to each SWB is compared between the non-cooperative and cooperative schemes. Extensive simulations show that the proposed optimization framework is indeed an efficient and practical solution for power control compared with the benchmark algorithm.
机译:认知无线电与无线身体传感器网络(WBSNS)辅助的电子医疗保健系统的集成已被认为是新一代普遍的医疗保健服务的能力,提供有区别的服务质量要求,并避免对初级医疗的有害电磁干扰在拥挤的无线电频谱上的设备(PMDS)。由于使用认知WBSNS(CWBSNS)在电子医疗服务场景中具有PMD的共享频谱频带,有效的传输功率控制和用于资源受限的次要可穿戴生物传感器(SWB)的优化策略在控制网络间干扰和改进方面发挥着关键作用能源效率。本文调查了利用实际限制的电子医疗保健中SWBS动态功率优化问题,例如,具有实际限制,例如,不完美的频谱感应和生理数据采样质量。我们通过差分游戏理论开发了动态功率优化的分布式优化框架,通过联合考虑了每个SWB的生理数据采样的实用性最大化和质量,同时满足SWB电池中的能耗的演化法。随着所有SWBS的非合作与合作关系,我们将差分游戏模型转换为两个子问题,即实用的最大化问题和总实用性最大化问题。利用Bellman的动态编程,我们推出了一个非合作的最佳解决方案,作为电力优化作为竞争情景构成的实用最大化问题的纳什均衡点。通过利用Pontryagin的最大原理,获得合作最佳解决方案,用于总实用的最大化问题,其中所有SWBS完全合作以获得最高的总实用程序。在分析结果时,在非合作和合作方案之间比较分布在每个SWB的实际实用性。广泛的模拟表明,与基准算法相比,所提出的优化框架确实是功率控制的有效和实用的解决方案。

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