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Entropy Based Exploration in Cognitive Radio Networks using Deep Reinforcement Learning for Dynamic Spectrum Access

机译:基于熵的探讨在认知无线网络中使用深度加强学习进行动态频谱访问

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This paper details the practical design of a Cognitive Radio network which uses multi-agent Deep Reinforcement Learning for dynamic spectrum access. Each network node evaluates a neural network model to determine when it can transmit and on what frequency channel. The models are trained offline in simulation to mitigate slow online training time. Furthermore, we propose the use of entropy-based-exploration to dynamically determine when more training is required in the wireless network. Unlike previous work that has only considered similar techniques in theory and simulation, we present over-the-air measurement results for the throughput and channel utilization collected in a large-scale software-defined radio testbed.
机译:本文详细介绍了一种认知无线电网络的实用设计,该网络使用多功能深度加强学习进行动态频谱访问。 每个网络节点评估神经网络模型,以确定它何时可以发送和频率信道。 模拟在模拟中训练了培训,以缓解在线培训时间。 此外,我们建议使用基于熵的探索,以动态确定无线网络中需要更多的培训。 与在理论和仿真中仅考虑类似技术的以前的工作不同,我们在大规模软件定义的无线电测试中收集的吞吐量和信道利用率的空中测量结果存在于空中测量结果。

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