不平衡变压器绝缘油监测数据的机器学习分析与研究

IF 0.5 Q4 AUTOMATION & CONTROL SYSTEMS
Shanghu Zhou, Bingyu Mo, Yanjiao He, Menglong Han, Pengsheng Xie, Peixuan Li
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引用次数: 0

摘要

随着智能变压器的不断推进,一套全面的变压器预防性维护体系已逐步建立。然而,变压器油监测数据中特征数据和正异常数据分布不均是影响有效分析的主要障碍,不利于变压器状态的智能评估。因此,本文提出利用机器学习方法对不平衡变压器绝缘油监测数据进行分析研究。首先,我们收集了有关智能变压器绝缘油状态的数据。随后,针对保温油状态数据的特点,设计了一种基于词向量聚类的数值方法。在此基础上,提出了一种新的非平衡绝缘油数据处理算法KASMOTE (k最近邻平均smote)。最后,本文通过采用七种机器学习算法验证了所实现数据集的有效性。实验结果表明,结合词向量聚类和KASMOTE算法的绝缘监测数据集既高效又具有挑战性,从而增强了大数据分析的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Analysis and Research of Unbalanced Transformer Insulation Oil Monitoring Data Using Machine Learning Methods

Analysis and Research of Unbalanced Transformer Insulation Oil Monitoring Data Using Machine Learning Methods

As intelligent transformers continue to advance—a comprehensive preventive maintenance system has been gradually established for transformers. However, the main impediment to effective analysis is the imbalanced distribution of character data and positive anomaly data in the monitoring data of transformer oil, which adversely affects the intelligent evaluation of transformer status. Therefore, in this paper, we proposed analysis and research of unbalanced transformer insulation oil monitoring data using machine learning methods. First, we collected data pertaining to the status of insulation oil in smart transformers. Subsequently, it designed a numerical method based on word vector clustering tailored to the characteristics of insulation oil status data. Furthermore, a novel algorithm named KASMOTE (k nearest neighbor average smote) was introduced to process imbalanced insulation oil data. Finally, the paper validates the efficacy of the implemented dataset by employing seven machine learning algorithms. The experimental results demonstrate that the insulation monitoring dataset, incorporating word vector clustering and the KASMOTE algorithm, is both efficient and challenging, thus enhancing the feasibility of big data analysis.

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来源期刊
AUTOMATIC CONTROL AND COMPUTER SCIENCES
AUTOMATIC CONTROL AND COMPUTER SCIENCES AUTOMATION & CONTROL SYSTEMS-
CiteScore
1.70
自引率
22.20%
发文量
47
期刊介绍: Automatic Control and Computer Sciences is a peer reviewed journal that publishes articles on• Control systems, cyber-physical system, real-time systems, robotics, smart sensors, embedded intelligence • Network information technologies, information security, statistical methods of data processing, distributed artificial intelligence, complex systems modeling, knowledge representation, processing and management • Signal and image processing, machine learning, machine perception, computer vision
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