Litcius/Paper detail

Improved Self-Organizing Map Clustering of Power Transformer Dissolved Gas Analysis Using Inputs Pre-Processing

Syahiduddin Misbahulmunir, Vigna K. Ramachandaramurthy, Yasmin Hanum Md Thayoob

2020IEEE Access41 citationsDOIOpen Access PDF

Abstract

Ability to organize data spatially while conserving the topological relation between data features makes the Self Organizing Map (SOM) a very useful tool for analysis and visualization of high dimensional data such as a power transformer's Dissolved Gas Analysis (DGA). Past SOM application required large historical data for its training and has limited fault detection sensitivity. In this paper, the effects of input features and data normalization are studied to enhance SOM's clustering. SOM is trained using DGA results extracted from actual faulted transformers. Combination of input features and data normalization methods are tested on SOM before the best SOM is identified. Validation is conducted using several datasets i.e. the IEC Technical Committee 10 database. Compared with past SOM applications, the proposed SOM required lesser training data, improved SOM's sensitivity in incipient fault detection and has good diagnosis accuracy. The proposed SOM is also compared with other AI-based DGA interpretation method i.e. Support Vector Machine (SVM) for benchmarking.

Topics & Concepts

Self-organizing mapNormalization (sociology)Cluster analysisComputer scienceSupport vector machineData miningDissolved gas analysisBenchmarkingVisualizationDatabase normalizationPattern recognition (psychology)TransformerArtificial intelligenceFault detection and isolationEngineeringVoltageMarketingElectrical engineeringSociologyAnthropologyTransformer oilActuatorBusinessPower Transformer Diagnostics and InsulationHigh voltage insulation and dielectric phenomenaEnergy Load and Power Forecasting