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Energy-Efficient Networks Selection Based Deep Reinforcement Learning for Heterogeneous Health Systems

机译:基于节能网络选择的异构健康系统的深增强学习

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Smart health systems improve the existing health services by integrating information and technology into health and medical practices. However, smart healthcare systems are facing major challenges including limited network resources, energy allocation, and latency. In this paper, we leverage the dense heterogeneous network (HetNet) architecture over 5G network to enhance network capacity and provide seamless connectivity for smart health systems. The network selection and energy allocation in HetNets are important factors in this regard due to their significant impact on system performance. Inspired by the success of Deep Reinforcement Learning (DRL) in solving complicated control problems, we present a novel DRL model for energy-efficient network selection in heterogeneous health systems. The proposed model selects the set of networks to be used for data transmission with adaptive compression at the edge with an optimal energy allocation policy for all the network participants. Our experimental results show that the proposed DRL model has a good performance compared to the existing state of art techniques while meeting different users' demands in highly dynamic environments.
机译:智能卫生系统通过将信息和技术集成到健康和医疗实践中,改善了现有的卫生服务。然而,智能医疗保健系统面临着主要挑战,包括网络资源有限,能源分配和延迟。在本文中,我们通过5G网络利用密集的异构网络(HetNet)架构来提高网络容量,并为智能健康系统提供无缝连接。由于其对系统性能的显着影响,Hetnets中的网络选择和能量分配是这方面的重要因素。灵感灵感来自深度加强学习(DRL)在解决复杂的控制问题方面,我们提出了一种新的DRL模型,用于在异构卫生系统中的节能网络选择。该建议的模型选择用于数据传输的网络集,该数据传输在边缘处具有自适应压缩,具有所有网络参与者的最佳能量分配策略。我们的实验结果表明,与现有的艺术技术相比,该拟议的DRL模型具有良好的性能,同时满足高度动态环境的不同用户的需求。

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