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Combining Q-Learning and Multi-Layer Perceptron Models on Wireless Channel Quality Prediction

机译:结合Q-Learning和Multi-Layer Perceptron模型对无线信道质量预测

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One of the most complex challenges that wireless communication systems will face in the coming years is the management of the radio resource. In the next years, the growth of mobile devices, forecast (CISCO, 2020), will lead to the coexistence of about 8.8 billion mobile devices with a growing trend for the following years. This scenario makes the reuse of the radio resource particularly critical, which for its part will not undergo significant changes in terms of bandwidth availability. One of the biggest problems to be faced will be to identify solutions that optimize its use. This work shows how a combined approach of a Reinforcement Learning model and a Supervised Learning model (Multi-Layer Perceptron) can provide good performance in the prediction of the channel behavior and on the overall performance of the transmission chain, even for Cognitive Radio with limited computational power, such as NB-IoT, LoRaWan, Sigfox.
机译:无线通信系统在未来几年面临的最复杂挑战之一是管理无线电资源的管理。 在未来几年,移动设备的增长,预测(思科,2020年)将导致约88亿移动设备的共存,持续趋势日益呈下降趋势。 这种情况使无线电资源的重用特别关键,这对于其部分不会在带宽可用性方面进行重大变化。 要面临的最大问题之一将是识别优化其使用的解决方案。 这项工作表明了加强学习模型和监督学习模型(多层Perceptron)的组合方法如何在通道行为的预测和传输链的整体性能中提供良好的性能,即使对于具有有限的认知无线电 计算能力,如NB-IOT,Lorawan,Sigfox。

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