基于自适应模糊的衰减时间序列预测模型

Dror Jacoby, J. Ostrometzky, H. Messer
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引用次数: 3

摘要

提出了一种商用微波链路衰减时间序列的自适应模糊预测方法。时间序列预测模型通常依赖于整个数据集遵循相同的数据生成过程(DGP)的假设。然而,无线微波链路中的信号受到信道中各种天气条件的严重影响。因此,衰减时间序列在不同时期的特征可能发生显著变化。我们提出了一个自适应框架,通过将具有相关时间模式的序列分组来更好地利用训练数据,以考虑信号的非平稳性质。这项工作的重点是双重的。一是探索将cml静态数据作为外生变量整合到衰减时间序列模型中,使其采用多种链路特征。此扩展允许在训练过程中包括从其他cml获得的各种衰减数据集,并显着增加可用的训练数据。其次,通过采用无监督模糊聚类过程和监督学习模型,开发一个自适应的短期衰减预测框架。我们通过递归神经网络(RNN)和自回归综合移动平均(ARIMA)变量实证分析了我们的模型框架和数据驱动方法。考虑到数据集的可用性和60秒预测的准确性,我们对从4G回程网络收集的实际测量数据进行了评估。我们表明,我们的框架可以显著提高传统模型的准确性,并且结合来自各种cml的数据对于AFP框架至关重要。根据具体的模型和数据的可用性,所提出的方法已被证明可以将预测模型的性能提高30 - 40%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Fuzzy-Based Models for Attenuation Time Series Forecasting
This work proposes an Adaptive Fuzzy Prediction (AFP) method for the attenuation time series in Commercial Microwave links (CMLs). Time-series forecasting models regularly rely on the assumption that the entire data set follows the same Data Generating Process (DGP). However, the signals in wireless microwave links are severely affected by the varying weather conditions in the channel. Consequently, the attenuation time series might change its characteristics significantly at different periods. We suggest an adaptive framework to better employ the training data by grouping sequences with related temporal patterns to consider the non-stationary nature of the signals. The focus in this work is two-folded. The first is to explore the integration of static data of the CMLs as exogenous variables for the attenuation time series models to adopt diverse link characteristics. This extension allows to include various attenuation datasets obtained from additional CMLs in the training process and dramatically increasing available training data. The second is to develop an adaptive framework for short-term attenuation forecasting by employing an unsupervised fuzzy clustering procedure and supervised learning models. We empirically analyzed our framework for model and data-driven approaches with Recurrent Neural Network (RNN) and Autoregressive Integrated Moving Average (ARIMA) variations. We evaluate the proposed extensions on real-world measurements collected from 4G backhaul networks, considering dataset availability and the accuracy for 60 seconds prediction. We show that our framework can significantly improve conventional models’ accuracy and that incorporating data from various CMLs is essential to the AFP framework. The proposed methods have been shown to enhance the forecasting model’s performance by 30 − 40%, depending on the specific model and the data availability.
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