Litcius/Paper detail

Data Driven Transformer Thermal Model for Condition Monitoring

Atip Doolgindachbaporn, George Callender, P. L. Lewin, Edward Simonson, Gordon Wilson

2021IEEE Transactions on Power Delivery45 citationsDOI

Abstract

Condition monitoring of power transformers, which are key components of electrical power systems, is essential to identify incipient faults and avoid catastrophic failures. In this paper machine learning algorithms, i.e., nonlinear autoregressive neural networks and support vector machines, are proposed to model the transformer thermal behavior for the purpose of monitoring. The thermal models are developed based on the historical measurements from nine transformers comprised of two 180-MVA units, four 240-MVA units and three 1000-MVA units. The data consist of load profile, tap position, winding indicator temperature (WTI) measurement, ambient temperature, wind speed and solar radiation. The results are validated against field measurements, and it is clearly demonstrated that the alternative algorithms surpass the IEEE Annex G thermal model. An incipient thermal fault identification algorithm is then proposed and successfully used to identify an issue using measurements taken in the field. This algorithm could be used to alert the operator and plan intervention accordingly.

Topics & Concepts

Condition monitoringTransformerEngineeringAutoregressive modelElectric power systemFault detection and isolationThermalControl engineeringComputer scienceElectrical engineeringElectronic engineeringReliability engineeringVoltagePower (physics)ActuatorMeteorologyEconomicsPhysicsEconometricsQuantum mechanicsPower Transformer Diagnostics and InsulationHigh voltage insulation and dielectric phenomenaPower Quality and Harmonics