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Deep Spectrum Prediction in High Frequency Communication Based on Temporal-Spectral Residual Network 被引量:9

Deep Spectrum Prediction in High Frequency Communication Based on Temporal-Spectral Residual Network
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摘要 High frequency(HF) communication is widely spread due to some merits like easy deployment and wide communication coverage. Spectrum prediction is a promising technique to facilitate the working frequency selection and enhance the function of automatic link establishment. Most of the existing spectrum prediction algorithms focus on predicting spectrum values in a slot-by-slot manner and therefore are lack of timeliness. Deep learning based spectrum prediction is developed in this paper by simultaneously predicting multi-slot ahead states of multiple spectrum points within a period of time. Specifically, we first employ supervised learning and construct samples depending on longterm and short-term HF spectrum data. Then, advanced residual units are introduced to build multiple residual network modules to respectively capture characteristics in these data with diverse time scales. Further, convolution neural network fuses the outputs of residual network modules above for temporal-spectral prediction, which is combined with residual network modules to construct the deep temporal-spectral residual network. Experiments have demonstrated that the approach proposed in this paper has a significant advantage over the benchmark schemes. High frequency(HF) communication is widely spread due to some merits like easy deployment and wide communication coverage. Spectrum prediction is a promising technique to facilitate the working frequency selection and enhance the function of automatic link establishment. Most of the existing spectrum prediction algorithms focus on predicting spectrum values in a slot-by-slot manner and therefore are lack of timeliness. Deep learning based spectrum prediction is developed in this paper by simultaneously predicting multi-slot ahead states of multiple spectrum points within a period of time. Specifically, we first employ supervised learning and construct samples depending on longterm and short-term HF spectrum data. Then, advanced residual units are introduced to build multiple residual network modules to respectively capture characteristics in these data with diverse time scales. Further, convolution neural network fuses the outputs of residual network modules above for temporal-spectral prediction, which is combined with residual network modules to construct the deep temporal-spectral residual network. Experiments have demonstrated that the approach proposed in this paper has a significant advantage over the benchmark schemes.
出处 《China Communications》 SCIE CSCD 2018年第9期25-34,共10页 中国通信(英文版)
基金 supported in part by the National Natural Science Foundation of China (Grants No. 61501510 and No. 61631020) Natural Science Foundation of Jiangsu Province (Grant No. BK20150717) China Postdoctoral Science Foundation Funded Project (Grant No. 2016M590398 and No.2018T110426) Jiangsu Planned Projects for Postdoctoral Research Funds (Grant No. 1501009A) Natural Science Foundation for Distinguished Young Scholars of Jiangsu Province (Grant No. BK20160034)
关键词 光谱数据 剩余网络 高频率 预言 时间 通讯 网络模块 自动连接 HF communication deep learning spectrum prediction temporal-spectral residual network
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