Inverse Techniques for the Estimation of Multiple Parameters Using Steady State Heat Transfer Experiments
Date
2018
Authors
M. K, Harsha Kumar
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
The aim of the present research work is to estimate the unknown parameters by using the
information obtained from in-house steady state heat transfer experiments and to employ
stochastic inverse techniques. With the advent of latest technologies in the field of advance
computing, conjugate heat transfer problems that are highly complex can easily be solved to
obtain temperature distributions.
In the present work, suitable mathematical models are proposed as forward models for a class
of conjugate heat transfer problem. The first problem solved was a conjugate heat transfer
from a mild steel fin. The numerical model is developed using ANSYS FLUENT with an
extended model which facilitates natural convection heat transfer. Based on the experimental
temperatures and with accompanying mathematical model, heat flux is estimated using
Genetic Algorithm as inverse method. To accelerate the inverse estimation, Genetic
algorithm is assisted with the Levenberg- Marquardt method for the estimation of the heat
flux, thus making the whole process as hybrid estimation. In the second problem, 3-D
conjugate fin model is proposed for the estimation of heat flux and heat transfer coefficient
using Artificial Neural Network (ANN) method. The novelty of the work is to inject the
experimental temperature methodologically in to the forward model which is trained by
Neural network thereby the forward model is driven by experimental data and to accomplish
the task of parameter estimation, ANN is used as inverse method that leads to a non-iterative
solution.
The concept of a priori information is then introduced for the simultaneous estimation of heat
flux and heat transfer coefficient using experimental data. This was accomplished using
Bayesian framework along with Markov Chain Monte Carlo (MCMC) method to condition
the posterior probability density function. A powerful Metropolis-Hastings algorithm is
exploited in order to attain stable Markov chains during the process of inverse estimation.
Finally, this was followed by estimation of heat generation and heat transfer coefficient from
a Teflon cylinder within the Bayesian framework.
Description
Keywords
Department of Mechanical Engineering, Inverse, conjugate, estimation, apriori, CFD, GA, ANN, Bayesian, MCMC, Metropolis-Hastings