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Deep Stacked Autoencoder-Based Long-Term Spectrum Prediction Using Real-World Data

Guangliang Pan, Qihui Wu, Guoru Ding, Wei Wang, Jie Li, XU Fu-yuan, Bo Zhou

2023IEEE Transactions on Cognitive Communications and Networking42 citationsDOI

Abstract

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.

Topics & Concepts

AutoencoderComputer scienceArtificial intelligencePattern recognition (psychology)Bandwidth (computing)Deep learningTerm (time)Data miningTelecommunicationsPhysicsQuantum mechanicsTelecommunications and Broadcasting TechnologiesBlind Source Separation TechniquesPAPR reduction in OFDM
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