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首页> 外文期刊>IEEE communications letters >Deep Learning for Spectrum Prediction From Spatial–Temporal–Spectral Data
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Deep Learning for Spectrum Prediction From Spatial–Temporal–Spectral Data

机译:深度学习空间 - 时间谱数据的频谱预测

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摘要

Spectrum prediction is challenging owing to its complex inherent dependency and heterogeneity among the spectrum data. In this letter, we propose a novel end-to-end deep-learning-based model, entitled spatial-temporal-spectral prediction network (STS-PredNet), to collectively predict the states of various frequency bands in all locations of interest at the same time. More specifically, the predictive recurrent neural network (PredRNN) is trained to capture the spatial-temporal-spectral dependencies of spectrum data. Three components of PredRNN units are employed to model the three kinds of temporal properties in spectrum data, i.e. closeness, daily period, and weekly trend. The final prediction is then performed in a dynamically aggregated way. Extensive experiments are conducted based on a real-world spectrum measurement dataset, which illustrate the superiority of the proposed STS-PredNet over the state-of-the-art baselines.
机译:由于其频谱数据之间的复杂固有依赖性和异质性,频谱预测是挑战。在这封信中,我们提出了一个新的端到端深度学习的模型,题为空间频率 - 频谱预测网络(STS-PRETETNET),共同预测各种频带的各个频带在所有感兴趣的位置同时。更具体地,培训预测性复发性神经网络(PEATRNN)以捕获频谱数据的空间频谱依赖性。采用PRIPRNN单元的三个组分来模拟频谱数据中的三种时间特性,即亲近,每日期间和每周趋势。然后以动态聚合的方式执行最终预测。基于实际频谱测量数据集进行了广泛的实验,其示出了所提出的STS-PREGNET在最先进的基线上的优越性。

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