认知无线网络的联合网络编码与背压算法

S. Soltani, Y. Sagduyu, Sean Scanlon, Yi Shi, Jason H. Li, Jared Feldman, J. Matyjas
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引用次数: 6

摘要

本文提出了认知无线网络的网络编码和背压算法的联合设计,并在高保真网络仿真试验台上与软件定义无线电(sdr)实现。背压算法为动态分组流量的联合路由和调度提供了吞吐量最优的解决方案。该方案适用于频谱随时间和空间动态变化的认知无线电网络,支持联合路由和频谱接入,无需端到端路径维护。将背压算法扩展到多播流量,在每个会话和目的地代表不同流的虚拟队列上部署网络编码。该扩展支持不同的方法来解码目的地的数据包。在没有公共控制信道的情况下,采用局部信息交换的分布式协调来支持与联合路由、信道接入和网络编码相结合的邻域发现、频谱感知和信道估计。认知网络功能是用GNU Radio和Python模块为不同的网络层实现的,并与USRP N210无线电一起使用。在分布式无线网络设置中解决了实际无线电实现问题,其中USRP N210无线电通过RFnest(高保真无线网络仿真工具)相互通信。RFnest通过数字控制路径损耗、衰落、延迟、拓扑和迁移效应,提供真实的物理信道环境。提供了大量的仿真测试结果,以评估吞吐量、积压和能耗,并验证了联合网络编码和背压算法在真实信道和无线电硬件效果下的SDR实现。
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Joint network coding and backpressure algorithm for cognitive radio networks
This paper presents the joint design of network coding and backpressure algorithm for cognitive radio networks and its implementation with software-defined radios (SDRs) in a high fidelity network emulation testbed. The backpressure algorithm is known to provide throughput optimal solutions to joint routing and scheduling for dynamic packet traffic. This solution applies to cognitive radio networks with spectrum dynamics changing over time and space, and supports joint routing and spectrum access without any need for end-to-end path maintenance. The backpressure algorithm is extended to multicast traffic with network coding deployed over virtual queues that represent different flows per session and destination. This extension is supported with different methods to decode packets at destinations. In the absence of a common control channel, distributed coordination with local information exchange is used to support neighborhood discovery, spectrum sensing and channel estimation that are integrated with joint routing, channel access and network coding. Cognitive network functionalities are implemented with GNU Radio and Python modules for different network layers, and used with USRP N210 radios. Practical radio implementation issues are addressed in a distributed wireless network setting, where USRP N210 radios communicate with each other through RFnest, a high fidelity wireless network emulation tool. RFnest provides realistic physical channel environment by digitally controlling path loss, fading, delay, topology and mobility effects. Extensive emulation test results are provided to assess throughput, backlog and energy consumption and verify the SDR implementation of joint network coding and backpressure algorithm under realistic channel and radio hardware effects.
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