Abstract
The presented paper aims to establish a strong basis for utilizing machine learning (ML) towards the prediction of the overall insulation health condition of medium voltage distribution transformers based on their oil test results. To validate the presented approach, the ML algorithms were tested on two databases of more than 1000 medium voltage transformer oil samples of ratings in the order of tens of MVA. The oil test results were acquired from in-service transformers (during oil sampling time) of two different utility companies in the gulf region. The illustrated procedure aimed to mimic a realistic scenario of how the utility would benefit from the use of different ML tools towards understanding the insulation health index of their transformers. This objective was achieved using two procedural steps. In the first step, three different data training and testing scenarios were used with several pattern recognition tools for classifying the transformer health condition based on the full set of input test features. In the second step, the same pattern recognition tools were used along with the three training/testing scenarios for a reduced number of test features. Also, a previously developed reduced model was the basis to reduce the needed number of tests for transformer health index calculations. It was found that reducing the number of tests did not influence the accuracy of the ML prediction models, which is considered as a significant advantage in terms of transformer asset management (TAM) cost reduction.
Highlights
Introduction and BackgroundOne of the major parameters that define the operation and planning of an electrical utility is the transformer asset health condition
Azmi et al states that transformer asset management (TAM) practices are at their best when they are comprised of both the condition assessment (CA) and financial information [3]
730 transformer oils samples were obtained from Util1, while 327 transformer oil samples were obtained from Util2
Summary
One of the major parameters that define the operation and planning of an electrical utility is the transformer asset health condition Based on their health condition, electrical utility engineers can predict the transformer useful remnant lifetime. Such an understanding can benefit utility companies to prepare a proper financial plan to estimate the future cost of maintenance and replacement for the transformer units. TAM, as explained in [1,2,3], defines a strategic set of future maintenance and replacement activities for the utility transformer asset based on diagnostic testing methods of the transformer health condition. Having knowledge of the transformer history (loading and failure history), associated risk index (based on the load it feeds), Energies 2019, 12, 2694; doi:10.3390/en12142694 www.mdpi.com/journal/energies
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