Article ID Journal Published Year Pages File Type
662016 International Journal of Heat and Mass Transfer 2007 12 Pages PDF
Abstract

This paper presents an efficient technique for analyzing inverse heat conduction problems using a Kalman Filter-enhanced Bayesian Back Propagation Neural Network (KF-B2PNN). The training data required for the KF-B2PNN are prepared using the Continuous-time analogue Hopfield Neural Network and the performance of the KF-B2PNN scheme is then examined in a series of numerical simulations. The results show that the proposed method can predict the unknown parameters in the current inverse problems with an acceptable error. The performance of the KF-B2PNN scheme is shown to be better than that of a stand-alone Back Propagation Neural Network trained using the Levenberg–Marquardt algorithm.

Related Topics
Physical Sciences and Engineering Chemical Engineering Fluid Flow and Transfer Processes
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