Abstract
Using temperature values in 2D-space and its variations in time as well as the boundary conditions for both temperatures and vapor pressure an inverse problem has been studied in attempt to infer the conductivity properties of the domain by using the physics informed neural networks. Relying on mathematical models of heat and mois-ture transfer а set of criteria has been proposed to form the loss functions to train the networks for temperature, vapor pressure, heat flux and conductivity predictions. The neural networks have been trained by using the proposed loss functions and the conductivity coefficients have been approximated to a certain level of accuracy. The results have shown good correlation of predictions to the ground truth values thus confirming good potential of the method and its ability to solve the problems provided that the sufficient number of training epochs have been used. Simultaneous and cou-pled training of few networks at a time has shown expectedly slow convergency.