Publication | Closed Access
Deep Stacked Autoencoder-Based Long-Term Spectrum Prediction Using Real-World Data
40
Citations
36
References
2023
Year
Spectrum PredictionSpectrum Prediction MethodMachine LearningData ScienceEngineeringPattern RecognitionRecurrent Neural NetworkFeature LearningSpectrum SensingAutoencodersSpectrum EstimationDeep LearningSpectrum DataSignal ProcessingSpeech Recognition
Spectrum prediction is challenging due to its multi-dimension, complex inherent dependency, and heterogeneity among the spectrum data. In this paper, we first propose a stacked autoencoder (SAE) and bi-directional long short-term memory (Bi-LSTM) based spectrum prediction method (SAEL-SP). Specifically, a SAE is designed to extract the hidden features (semantic coding) of spectrum data in an unsupervised manner. Then, the output of SAE is connected to a predictor (Bi-LSTM), which is used for long-term prediction by learning hidden features. The main advantage of SAEL-SP is that the underlying features of spectrum data can be retained automatically, layer by layer, rather than designing them manually. To further improve the prediction accuracy of SAEL-SP and achieve a wider bandwidth prediction, we propose a SAE-based spectrum prediction method using temporal-spectral-spatial features of data (SAE-TSS). Different from SAEL-SP, the input of SAE-TSS is the image format. SAE-TSS achieves higher prediction accuracy than SAEL-SP using the features extracted from time, frequency, and space dimensions. We use a real-world spectrum dataset to validate the effectiveness of two prediction frameworks. Experiment results show that both SAEL-SP and SAE-TSS outperform existing spectrum prediction approaches.
| Year | Citations | |
|---|---|---|
Page 1
Page 1