POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST

Health Index Transformer is currently the most common way to predict the health condition of transformers, to avoid the failure of the transformer, anticipation is needed by monitoring and maintaining the condition of the transformer. This study presents information regarding the diagnosis of tra...

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Main Author: Chintia, Geby
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/77947
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:77947
spelling id-itb.:779472023-09-15T10:45:18ZPOWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST Chintia, Geby Indonesia Theses Health Index, Power Transformer, Condition Monitoring and Diagnostics, Random Forest, Missing Value. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/77947 Health Index Transformer is currently the most common way to predict the health condition of transformers, to avoid the failure of the transformer, anticipation is needed by monitoring and maintaining the condition of the transformer. This study presents information regarding the diagnosis of transformer conditions based on the Transformer Health Index method using Random Forest. The Transformer Health Index method provides a comprehensive assessment of the condition of the transformer. Then generally so many development methods are also used. To avoid failure of the power transformer anticipation, monitoring and maintaining the condition of the transformer is needed. This study presents information regarding the diagnosis of transformer conditions based on the Transformer Health Index method using Random Forest. The Transformer Health Index method provides a comprehensive assessment of the condition of the transformer. This paper discusses the prediction of transformer health conditions using the Missing Data Replacement Method in five ways, which are Removed Parameter, Average value, Assume Good, SLR, and Random Forest Prediction, with seven proposed combinations based on three parameters, namely 2FAL, IFT and Water Content while considering the level of accuracy. The results from 504 Transformer analysis state that the Health Index calculation using the Random Forest method has the highest accuracy rate among other methods with a value of 92%. As we know that Random Forest Metode is an ensemble classification technique that often produces superior performances over individual classifiers, that fits some decision tree classifiers on various subsamples of the dataset and uses averaging to improve the predictive accuracy. From each combination applied, explaining the availability of several parameters could be an influence on the Health Index Transformer assessment, but it can still be done with the proposed method. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Health Index Transformer is currently the most common way to predict the health condition of transformers, to avoid the failure of the transformer, anticipation is needed by monitoring and maintaining the condition of the transformer. This study presents information regarding the diagnosis of transformer conditions based on the Transformer Health Index method using Random Forest. The Transformer Health Index method provides a comprehensive assessment of the condition of the transformer. Then generally so many development methods are also used. To avoid failure of the power transformer anticipation, monitoring and maintaining the condition of the transformer is needed. This study presents information regarding the diagnosis of transformer conditions based on the Transformer Health Index method using Random Forest. The Transformer Health Index method provides a comprehensive assessment of the condition of the transformer. This paper discusses the prediction of transformer health conditions using the Missing Data Replacement Method in five ways, which are Removed Parameter, Average value, Assume Good, SLR, and Random Forest Prediction, with seven proposed combinations based on three parameters, namely 2FAL, IFT and Water Content while considering the level of accuracy. The results from 504 Transformer analysis state that the Health Index calculation using the Random Forest method has the highest accuracy rate among other methods with a value of 92%. As we know that Random Forest Metode is an ensemble classification technique that often produces superior performances over individual classifiers, that fits some decision tree classifiers on various subsamples of the dataset and uses averaging to improve the predictive accuracy. From each combination applied, explaining the availability of several parameters could be an influence on the Health Index Transformer assessment, but it can still be done with the proposed method.
format Theses
author Chintia, Geby
spellingShingle Chintia, Geby
POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST
author_facet Chintia, Geby
author_sort Chintia, Geby
title POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST
title_short POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST
title_full POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST
title_fullStr POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST
title_full_unstemmed POWER TRANSFORMER INSULATION SYSTEM HEALTH INDEX WITH MISSING DATA PREDICTION USING RANDOM FOREST
title_sort power transformer insulation system health index with missing data prediction using random forest
url https://digilib.itb.ac.id/gdl/view/77947
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