中压XLPE电缆长期局部放电测量的多元时间序列建模

Z. Ahmed, Mojtaba Rostaghi Chalaki, Kamran Yousfpour, J. Klüss
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引用次数: 1

摘要

在数据采集期间,对多个PD响应变量(即平均电荷、放电脉冲数、平均充电电流和最大重复放电幅度)进行了多变量时间序列分析。利用加速退化电缆样品的实验终身PD数据,研究了上述响应变量之间的动态趋势和关系。这些检验识别的随机协整变量可以组合成新的平稳变量来估计向量自回归(VAR)和向量误差校正(VEC)模型的参数。通过生成蒙特卡罗和最小均方误差(MMSE)模拟预报,对两种模型的有效性进行了评价。真实观测数据和预测数据的平均值都在95个百分位置信区间内,这证明了两个模型的可靠性和准确性。基于多个响应变量之间协整关系的寿命预测模型,与实验评估的击穿时间值相关,可用于设置紧急报警触发器,并作为建立局部放电活动长期连续监测的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate Time Series Modeling for Long Term Partial Discharge Measurements in Medium Voltage XLPE Cables
A multivariate time series analysis was performed for a system of several PD response variables, i.e. average charge, number of discharge pulses, average charge current, and largest repetitive discharge magnitude over the data acquisition period. Experimental lifelong PD data obtained from cable samples subjected to accelerated degradation was used to study the dynamic trends and relationships among those aforementioned response variables. Stochastically formulated cointegrated variables recognized by those tests can be combined to form new stationary variables to estimate the parameters for the Vector Auto Regression (VAR) and Vector-Error Correction (VEC) models. The validity of both models was evaluated by generating Monte Carlo and Minimum Mean Squared Error (MMSE) simulated forecasts. True observed data and forecasted data mean values lie within the 95th percentile confidence interval responses which demonstrates the soundness and accuracy of both models. A life-predicting model based on the cointegrating relations between the multiple response variables, correlated with experimentally evaluated time-to-breakdown values, can be used to set an emergent alarming trigger and as a step towards establishing long-term continuous monitoring of partial discharge activity.
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