Electrical Engineering and Systems Science > Systems and Control
[Submitted on 31 Mar 2023]
Title:Rapid online solution of inverse heat transfer problem by ANN-based extended Kalman smoothing algorithm
View PDFAbstract:Digital twin is a modern technology for many advanced applications. To construct a digital twin of a thermal system, it is required to make online estimations of unknown time-varying boundary conditions from sensor measured data, which needs to solve inverse heat transfer problems (IHTPs). However, a fast and accurate solution is challenging since the measured data is normally contaminated with noise and the traditional method to solve IHTP involves significant amount of calculations. Therefore, in this work, a rapid yet robust inversion algorithm called ANN-based extended Kalman smoothing algorithm is developed to realize the online prediction of desired parameter based on the measurements. The fast prediction is realized by replacing the conventional CFD-based state transfer models in extended Kalman smoothing algorithm with pre-trained ANN. Then, a two-dimensional internal convective heat transfer problem was employed as the case study to test the algorithm. The results have proved that the proposed algorithm is a computational-light and robust approach for solving IHTPs. The proposed algorithm can achieve estimation of unknown boundary conditions with a dimensionless average error of 0.0580 under noisy temperature measurement with a standard deviation of 10 K with a drastic reduction of computational cost compared to the conventional approach. Moreover, the effects of training data, location of sensor, future time step selection on the performance of prediction are investigated.
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