Fault Diagnosis of Uninterruptible Power System Based on Gaussian Mixed Model and XGBoost

Hongyu Chen, Yanqing Peng, Qiuyu Yang, Lei Yan
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Abstract

Uninterruptible power system (UPS) is an important equipment for guarantee data security. The previous research on UPS fault detection has established a mathematical model of the circuit system and combine with machine learning algorithm for fault diagnosis. Because the UPS circuit structure is complex and easy influence by environment temperature humidity, the research method of establishing mathematical model is suitable for the diagnosis of some internal circuits, but not for the whole UPS machine. Based on the analysis of UPS historical data, this paper has established a method that can catch and classify the UPS fault based on the Gaussian Mixed Model (GMM) and the eXtreme Gradient boost (XGBoost). This design is divided into two parts. The first part has used GMM to calculate the logarithmic summation probability of UPS data, and analyze the relationship between UPS logarithmic sum probability and fault working condition. Then set the threshold to capture the UPS fault according to the fault data recall rate. The second part was fault recognition by XGBoost model. The extremely unbalanced fault data makes it difficult to classify, so XGBoost algorithm has been used to do the classification. combine learning curve with grid search to optimize XGBoost parameters. Experimental results show that GMM can accurately detect equipment faults.
基于高斯混合模型和XGBoost的不间断电力系统故障诊断
不间断电源系统(UPS)是保障数据安全的重要设备。前人对UPS故障检测的研究建立了电路系统的数学模型,并结合机器学习算法进行故障诊断。由于UPS电路结构复杂,容易受到环境温度湿度的影响,建立数学模型的研究方法适用于部分内部电路的诊断,但不适用于整个UPS机器。本文在分析UPS历史数据的基础上,建立了一种基于高斯混合模型(GMM)和极限梯度升压(XGBoost)的UPS故障捕获和分类方法。本设计分为两部分。第一部分利用GMM计算了UPS数据的对数求和概率,分析了UPS对数求和概率与故障工况的关系。然后根据故障数据召回率设置故障捕获阈值。第二部分是利用XGBoost模型进行故障识别。由于故障数据极不平衡,导致分类困难,因此采用XGBoost算法进行分类。结合学习曲线和网格搜索优化XGBoost参数。实验结果表明,GMM能够准确地检测设备故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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