A hybrid model for congestion prediction in HF spectrum based on ensemble empirical mode decomposition

Yang Bai, Hongbo Li, Yun Zhang
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引用次数: 1

Abstract

This paper presents a hybrid model combining AR model with Volterra series expansion that uses Ensemble Empirical Mode Decomposition as preprocessing step for predicting congestion in high-frequency spectrum. In this model, original complex spectral occupancy phenomenon is decomposed into several simpler components among which relatively stable Intrinsic Mode Functions (IMFs) are predicted by AR model and the residue with tendency is modelled by Volterra series expansion; both of AR and Volterra's coefficients are modified by RLS algorithm in a centralized way. We compared the model with stand-alone use of AR model and Volterra adaptive filters for one-step prediction and employed RMSE for performance comparison. The results have demonstrated that the hybrid model enhances the accuracy of prediction to behaviors of spectrum driven from nonlinear and non-stationary processes.
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基于集合经验模态分解的高频频谱拥塞预测混合模型
本文提出了一种将AR模型与Volterra级数展开相结合的混合模型,该模型采用集成经验模态分解作为预处理步骤来预测高频频谱中的拥塞。该模型将原始的复杂光谱占用现象分解为几个较简单的分量,其中相对稳定的本征模态函数(IMFs)用AR模型预测,有趋势的残差用Volterra级数展开建模;通过RLS算法对AR和Volterra系数进行集中修正。我们将模型与单独使用AR模型和Volterra自适应滤波器进行一步预测进行比较,并使用RMSE进行性能比较。结果表明,混合模型提高了对非线性非平稳过程驱动谱行为的预测精度。
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