节约型周期自回归模型在低压PLC网络突发脉冲噪声中的应用

S. O. Awino, T. Afullo
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引用次数: 2

摘要

本文提出了一种简化周期自回归(PPAR)模型,用于模拟低压电力线通信(PLC)网络中1 ~ 30 MHz频率范围内的突发脉冲噪声。所获得的脉冲噪声时间序列是季节性的,并表现出一种自相关结构,这种自相关结构不仅取决于观测间的时间滞后,而且取决于测量窗口长度周期的季节。假设将季节分组为具有相似自回归(AR)特征的一个或多个季节,将各个季节的单独AR模型组合起来,以获得给定组中所有季节的单一模型。因此,分组后,对更多的PPAR模型的参数进行估计和诊断检查,通过夸祖鲁-纳塔尔大学获得的测量数据进行验证,并与其他周期时间序列模型进行比较。
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On the Application of Parsimonious Periodic Autoregressive Models to Bursty Impulsive Noise in Low-Voltage PLC Networks
This paper proposes Parsimonious Periodic Autoregressive (PPAR) models for modelling the bursty impulsive noise present in low-voltage power line communication (PLC) networks in the frequency range of 1 – 30 MHz. The acquired impulsive noise time series is seasonal and exhibit an autocorrelation structure that depends not only on the time lag between observations but also the season of the window length period of measurements. Assuming the seasons are grouped into groups of one or more seasons with similar autoregressive (AR) characteristics, individual AR models for various seasons are combined to obtain a single model for all seasons in a given group. Consequently after grouping, the parameters of the more PPAR models are estimated and diagnostically checked, validated through measurement data acquired from the University of KwaZulu-Natal and compared to other periodic time series models.
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