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A hardware testbed for learning-based spectrum handoff in cognitive radio networks

机译:认知无线电网络中基于学习的频谱切换的硬件测试平台

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A real-time cognitive radio network (CRN) testbed is implemented by using the universal software radio peripheral (USRP) and GNU Radio to demonstrate the use of reinforcement learning and transfer learning schemes for spectrum handoff decisions. By considering the channel status (idle or occupied) and channel condition (in terms of packet error rate), the sender node performs the learning-based spectrum handoff. In reinforcement learning, the number of network observations required to achieve the optimal decisions is often prohibitively high, due to the complex CRN environment. When a node experiences new channel conditions, the learning process is restarted from scratch even when the similar channel condition has been experienced before. To alleviate this issue, a transfer learning based spectrum handoff scheme is implemented, which enables a node to learn from its neighboring node(s) to improve its performance. In transfer learning, the node searches for an expert node in the network. If an expert node is found, the node requests the Q-table from the expert node for making its spectrum handoff decisions. If an expert node cannot be found, the node learns the spectrum handoff strategy on its own by using the reinforcement learning. Our experimental results demonstrate that the machine learning based spectrum handoff performs better in the long term and effectively utilizes the available spectrum. In addition, the transfer learning requires less number of packet transmissions to achieve an optimal solution, compared to the reinforcement learning.(1)
机译:通过使用通用软件无线电外围设备(USRP)和GNU Radio来实现实时认知无线电网络(CRN)测试平台,以演示将增强学习和转移学习方案用于频谱切换决策。通过考虑信道状态(空闲或已占用)和信道状况(就分组错误率而言),发送方节点执行基于学习的频谱切换。在强化学习中,由于复杂的CRN环境,实现最佳决策所需的网络观察次数通常非常高。当节点遇到新的信道状况时,即使之前已经经历过类似的信道状况,学习过程也会从头开始重新启动。为了减轻该问题,实现了基于转移学习的频谱切换方案,该方案使节点能够从其相邻节点中学习以改善其性能。在转移学习中,节点在网络中搜索专家节点。如果找到专家节点,则该节点向专家节点请求Q表以做出其频谱切换决策。如果找不到专家节点,则该节点通过使用强化学习自行学习频谱切换策略。我们的实验结果表明,基于机器学习的频谱切换在长期内表现更好,并有效地利用了可用频谱。此外,与强化学习相比,传输学习需要更少的数据包传输次数来实现最佳解决方案。(1)

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