This paper focuses on the thermal modelling of power transformers using physics-informed neural networks (PINNs). PINNs are neural networks trained to consider the physical laws provided by the general nonlinear partial differential equations (PDEs). The PDE considered for the study of power transformer’s thermal behaviour is the heat diffusion equation provided with boundary conditions given by the ambient temperature at the bottom and the top-oil temperature at the top. The model is one dimensional along the transformer height. The top-oil temperature and the transformer’s temperature distribution are estimated using field measurements of ambient temperature, top-oil temperature and the load factor. The measurements from a real transforme...
The PhD in engineering has the research topic: “Thermal-Hydraulic Network Model Based Design of Powe...
Ejector-absorption heat transformers (EAHTs) are attractive for increasing a solar-pond's temperatur...
The winding hot-spot temperature is one of the most critical parameters that affect the useful life ...
This paper focuses on the thermal modelling of power transformers using physics-informed neural netw...
Artificial neural networks (ANNs) are commonly considered as "black boxes": they can approximate any...
Abstract: In this paper, several simple Multilayer Feed-forward network structures for transformer t...
This paper introduces approaches for power transformer thermal modeling based on two conceptually di...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
Electricity demand is increasing because of global decarbonisation efforts to reduce emissions that ...
This thesis presents an investigation and a comparative study of four different approaches namely AN...
Thermal modeling in the transient condition is very important for cast-resin dry-type transformers. ...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
Condition monitoring of power transformers, which are key components of electrical power systems, is...
The real need for advanced power system automation is associated with (i) the growing demand for rel...
This paper presents an application of a new system modeling algorithm using neural fuzzy technique. ...
The PhD in engineering has the research topic: “Thermal-Hydraulic Network Model Based Design of Powe...
Ejector-absorption heat transformers (EAHTs) are attractive for increasing a solar-pond's temperatur...
The winding hot-spot temperature is one of the most critical parameters that affect the useful life ...
This paper focuses on the thermal modelling of power transformers using physics-informed neural netw...
Artificial neural networks (ANNs) are commonly considered as "black boxes": they can approximate any...
Abstract: In this paper, several simple Multilayer Feed-forward network structures for transformer t...
This paper introduces approaches for power transformer thermal modeling based on two conceptually di...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
Electricity demand is increasing because of global decarbonisation efforts to reduce emissions that ...
This thesis presents an investigation and a comparative study of four different approaches namely AN...
Thermal modeling in the transient condition is very important for cast-resin dry-type transformers. ...
Inordinate temperature rise in a power transformer due to load current is known to be the most impor...
Condition monitoring of power transformers, which are key components of electrical power systems, is...
The real need for advanced power system automation is associated with (i) the growing demand for rel...
This paper presents an application of a new system modeling algorithm using neural fuzzy technique. ...
The PhD in engineering has the research topic: “Thermal-Hydraulic Network Model Based Design of Powe...
Ejector-absorption heat transformers (EAHTs) are attractive for increasing a solar-pond's temperatur...
The winding hot-spot temperature is one of the most critical parameters that affect the useful life ...