Abstract:
In this paper, we develop topological data analysis (TDA) method for motor current signature analysis (MCSA), and apply it to induction motor eccentricity fault detection...Show MoreMetadata
Abstract:
In this paper, we develop topological data analysis (TDA) method for motor current signature analysis (MCSA), and apply it to induction motor eccentricity fault detection. We introduce TDA and present the procedure of extracting topological features from time-domain data that will be represented using persistence diagrams and vectorized Betti sequences. The procedure is applied to induction machine phase current signal analysis, and shown to be highly effective in differentiating signals from different eccentricity levels. With TDA, we are able to use a simple regression model that can predict the fault levels with reasonable accuracy, even for the data of eccentricity levels that are not seen in the training data. The proposed method is model-free, and only requires a small segment of time-domain data to make prediction. These advantages make it attractive for a wide range of fault detection applications.
Date of Conference: 17-20 October 2022
Date Added to IEEE Xplore: 09 December 2022
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ISSN Information:
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- IEEE Keywords
- Index Terms
- Electrical Engineering ,
- Topological Analysis ,
- Topological Data Analysis ,
- Eccentricity Fault ,
- Regression Model ,
- Training Data ,
- Topological Features ,
- Induction Motor ,
- Time-domain Data ,
- Current Signature ,
- Training Set ,
- Convolutional Neural Network ,
- Horizontal Plane ,
- Experiment Data ,
- Point Cloud ,
- 3D Space ,
- Vector Of Length ,
- Kriging ,
- Data Space ,
- Air Gap ,
- Stator Current ,
- Vibration Signals ,
- Manufacturing Stage ,
- Time-domain Signal ,
- Support Vector Regression ,
- Simplicial Complex ,
- Center Of Rotation ,
- Load Side ,
- Defects In Components ,
- Large Circle
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Electrical Engineering ,
- Topological Analysis ,
- Topological Data Analysis ,
- Eccentricity Fault ,
- Regression Model ,
- Training Data ,
- Topological Features ,
- Induction Motor ,
- Time-domain Data ,
- Current Signature ,
- Training Set ,
- Convolutional Neural Network ,
- Horizontal Plane ,
- Experiment Data ,
- Point Cloud ,
- 3D Space ,
- Vector Of Length ,
- Kriging ,
- Data Space ,
- Air Gap ,
- Stator Current ,
- Vibration Signals ,
- Manufacturing Stage ,
- Time-domain Signal ,
- Support Vector Regression ,
- Simplicial Complex ,
- Center Of Rotation ,
- Load Side ,
- Defects In Components ,
- Large Circle
- Author Keywords