基于特征气体排布图和灰色模型的电力变压器组合预测方法

Xiaolu Xu, Lin Cheng, Dexin Nie, Yiming Wang, B. Qi, Peng Zhang, C. Gao, Chengrong Li
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引用次数: 4

摘要

电力系统的可靠性直接取决于变压器的运行状态。随着设备制造工艺和维护水平的不断提高,因故障导致的机器停机次数大大减少。变压器故障以过热故障和内部放电为主,在故障发生的同时释放能量。在上述过程中,变压器的绝缘材料被分解、开裂。烷烃产生并溶解在变压器油中。大量数据表明,设备状况与油中溶解气含量之间存在相关性。油层析的时间序列数据在局部区域表现出小范围的波动。为了减少数据波动对预测模型的影响,本文提出了一种基于特征气体排布图和灰色模型的电力变压器组合预测方法。与传统的灰色关联分析相比,该模型可以解决数据波动引起的模型发散问题。此外,提出了一种基于特征气体布置图的方法,根据设备的实际运行状态,对预测结果的偏差进行了校正。该方法提高了遗传算法的效率,使模型得到更准确的预测。在实际案例分析中,本文提出的模型取得了良好的应用效果,尤其适用于精度较高的小样本预测问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combination Prediction Method of Power Transformers Based on Feature Gas Arrangement Diagram and Grey Model
The reliability of the power system depends directly on the operating state of the transformer. As equipment manufacturing processes and maintenance levels are continuously improved, the number of machine downtimes caused by faults is significantly reduced. Transformer faults are dominated by overheating faults and internal discharges, and energy is released at the same time as the fault occurs. The insulation material of the transformer is decomposed and cracked in the above process. Alkanes are produced and dissolved in transformer oil. A large amount of data indicates that there is a correlation between the condition of the equipment and the dissolved gas content in the oil. The time sequences data of oil chromatography shows small-scale fluctuations in the local area. In order to reduce the impact of data fluctuation on the prediction model, this paper proposes a combination prediction method of power transformers based on the feature gas arrangement diagram and grey model. Compared with the traditional grey correlation analysis, this model can solve the model divergence caused by data fluctuations. In addition, a method based on the feature gas arrangement diagram is proposed, which corrects the deviation of the prediction result based on the actual operation state of the equipment. This method improves the efficiency of the genetic algorithm and allows the model to obtain more accurate predictions. In the actual case analysis, the model proposed in this paper obtains a good application effect, especially for small sample prediction nroblems with high accuracy.
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