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大数据处理环境下大型机组设备故障可视化诊断方法研究
引用本文:杨华芬.大数据处理环境下大型机组设备故障可视化诊断方法研究[J].机械与电子,2022,40(5):38-41.
作者姓名:杨华芬
作者单位:上海工商外国语职业学院智能制造与信息工程学院,上海 201314
摘    要:为了提升大型机组设备故障信息的提取效率,实现故障可视化诊断,提出大数据处理环境下大型机组设备故障可视化诊断方法。采用基于工作变形分析( ODS )的振动可视化技术完成大型机组设备的振动分析,获取设备不同模态下的故障频率响应信号,并将其频率谱作为故障特征,利用模糊减法聚类算法获取故障诊断结果;并利用三维平行散点图与人机交互将故障诊断结果可视化呈现。测试结果表明,该方法可通过数据聚类有效完成大型机组设备故障诊断,并且具备较好的可视化效果,可满足大型机组设备故障的可视化需求。

关 键 词:大数据处理  模糊减法  大型机组  设备故障  可视化诊断  频率谱

Research on Visualized Diagnosis Method of Large Unit Equipment Failure in Big Data Processing Environment
YANG Huafen.Research on Visualized Diagnosis Method of Large Unit Equipment Failure in Big Data Processing Environment[J].Machinery & Electronics,2022,40(5):38-41.
Authors:YANG Huafen
Affiliation:( School of Intelligent Manufacturing and Information Engineering , Shanghai Institute of Commerce and Foreign Languages , Shanghai 201314 , China )
Abstract:In order to improve the extraction efficiency of large-scale unit equipment fault information and realize the visual diagnosis of faults , a visual diagnosis method for large-scale unit equipment faults in a big data processing environment is proposed.The vibration visualization technology based on operational deformation shape( ODS ) is used to complete the vibration analysis of large unit equipment.The fault frequency response signals under different modes of the equipment are obtained , and the frequency spectrum is taken as the fault feature.The fuzzy subtraction clustering algorithm is used to obtain the fault diagnosis results ; The results of fault diagnosis are visualized by 3D parallel scatter diagram and human-computer interaction.The test results show that the method can effectively complete the fault diagnosis of large scale unit equipment through data clustering , and has a good visualization effect , which can meet the visualization requirements of large-scale unit equipment failure.
Keywords:big data processing  fuzzy subtraction  large units  equipment failure  visual diagnosis  frequency spectrum
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