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,...
A non-invasive method useful for asset management is to estimate the functional age of the insulatin...
An emerging prognostic and health management (PHM) technology has recently attracted a great deal of...
Abstract Thermal models are widely used for diagnosing thermal faults, predicting the thermal behavi...
Electricity demand is increasing because of global decarbonisation efforts to reduce emissions that ...
On-line monitoring of electric power transformers can provide a clear indication of their status and...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
The real need for advanced power system automation is associated with (i) the growing demand for rel...
Frequency response analysis (FRA) is a powerful and widely used tool for condition assessment in pow...
Frequency response analysis (FRA) is a powerful and widely used tool for condition assessment in pow...
The condition of power transformers has a significant impact on the reliable operation of the electr...
In this paper, time series decomposition and thermal models are used to identify WTI issues; specifi...
The winding hot-spot temperature is one of the most critical parameters that affect the useful life ...
Life expectancy of power transformers is limited by the integrity of insulating cellulosic paper wou...
Ageing assets in the power system increase the need for maintenance and reinvestments. There is curr...
A non-invasive method useful for asset management is to estimate the functional age of the insulatin...
An emerging prognostic and health management (PHM) technology has recently attracted a great deal of...
Abstract Thermal models are widely used for diagnosing thermal faults, predicting the thermal behavi...
Electricity demand is increasing because of global decarbonisation efforts to reduce emissions that ...
On-line monitoring of electric power transformers can provide a clear indication of their status and...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
The real need for advanced power system automation is associated with (i) the growing demand for rel...
Frequency response analysis (FRA) is a powerful and widely used tool for condition assessment in pow...
Frequency response analysis (FRA) is a powerful and widely used tool for condition assessment in pow...
The condition of power transformers has a significant impact on the reliable operation of the electr...
In this paper, time series decomposition and thermal models are used to identify WTI issues; specifi...
The winding hot-spot temperature is one of the most critical parameters that affect the useful life ...
Life expectancy of power transformers is limited by the integrity of insulating cellulosic paper wou...
Ageing assets in the power system increase the need for maintenance and reinvestments. There is curr...
A non-invasive method useful for asset management is to estimate the functional age of the insulatin...
An emerging prognostic and health management (PHM) technology has recently attracted a great deal of...
Abstract Thermal models are widely used for diagnosing thermal faults, predicting the thermal behavi...