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A Stochastic Game Approach for Collaborative Beamforming in SDN-Based Energy Harvesting Wireless Sensor Networks

机译:基于SDN的能量收集无线传感器网络中的协作波束形成的随机游戏方法

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摘要

Collaborative beamforming (CB) has recently emerged as a promising technique for transmission range extension and energy consumption reduction in wireless sensor networks (WSNs). However, due to the constrained energy and limited data processing capabilities of sensor nodes, the performance optimization of CB mainlobe and sidelobe control (SC) encounters challenges in the practical deployment. To address these challenges, we present an architecture of software-defined energy harvesting WSN (SD-EHWSN) for CB communications. Specifically, we first design the mechanism of CB communications based on the software-defined network (SDN) architecture to reduce the communication and computational overhead of sensor nodes. Then, we consider solar energy-harvesting system to achieve long-term operation of WSN and utilize a stationary Markov (SM) chain to model the arrival process of solar energy. Based on the stochastic nature of solar energy, a stochastic game model is developed to formulate the problem of CB optimization in SD-EHWSN, and the existence proof of Nash equilibria is provided. Based on the analytical results, we propose a reinforcement learning algorithm to maximize the long-term signal-to-noise ratio (SNR) performance with SC and prove the convergence of the algorithm. Simulation results are presented to validate the efficiency of the proposed scheme for CB communications in SD-EHWSN.
机译:协作波束形成(CB)最近被出现为无线传感器网络(WSN)中的传输范围扩展和能耗减少的有希望的技术。然而,由于传感器节点的受限能量和有限的数据处理能力,CB mainLobe和Sidelobe控制(SC)的性能优化在实际部署中遇到挑战。为解决这些挑战,我们介绍了用于CB通信的软件定义的能量收集WSN(SD-EHWSN)的体系结构。具体地,我们首先根据软件定义的网络(SDN)架构设计CB通信的机制,以减少传感器节点的通信和计算开销。然后,我们考虑太阳能收集系统,实现WSN的长期运行,并利用静止马尔可夫(SM)链来模拟太阳能的到达过程。基于太阳能的随机性质,开发了一种随机游戏模型,以制定SD-EHWSN中CB优化问题,提供了纳什均衡的存在证明。基于分析结果,我们提出了一种强化学习算法,可以通过SC来最大化长期信噪比(SNR)性能,并证明算法的收敛性。提出了仿真结果以验证SD-EHWSN中CB通信方案的效率。

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