基于长短期记忆的多步谱状态预测

Kang Wang, Peiran Wu, M. Xia
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引用次数: 0

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为了在有限的频谱资源下支持越来越多的无线设备,探索更有效的频谱利用策略具有重要意义。本文提出了一种基于长短期记忆(LSTM)的频谱状态预测方法,以减少延迟,提高频谱效率。首先通过核密度估计(KDE)方法自适应确定阈值,然后对检索到的数据集进行预处理。然后将预处理后的数据输入LSTM网络进行训练和验证。该方案可实现不同时间分辨率下的单步和多步预测。最后给出了仿真结果并进行了讨论,验证了所提方法的有效性。利用历史数据中的信息,可以有效地进行信道预选,避免冲突。
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Multi-Step Spectrum States Prediction Based on Long Short-Term Memory
To support increasing number of wireless devices under limited spectrum resources, it is of great significance to explore more efficient spectrum usage strategies. In this paper, a spectrum states prediction approach based on long short-term memory (LSTM) has been proposed to reduce latency and improve spectrum efficiency. We first determine the threshold adaptively by the kernel density estimation (KDE) method, and then data preprocessing is performed on the retrieved dataset. After that, the preprocessed data is fed into the LSTM network for training and validation. The proposed scheme is capable of single-step and multi-step prediction with different time resolutions. At last, simulation results are presented and discussed to show the effectiveness of the proposed approach. By taking advantage of the information in historical data, the devices can perform channel pre-selection and avoid conflict efficiently.
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