Parameter estimation and model selection for water sorption in a wood fibre material

03/25/2021
by   Julien Berger, et al.
0

The sorption curve is an essential feature for the modelling of heat and mass transfer in porous building materials. Several models have been proposed in the literature to represent the amount of moisture content in the material according to the water activity (or capillary pressure) level. These models are based on analytical expressions and few parameters that need to be estimated by inverse analysis. This article investigates the reliability of eight models through the accuracy of the estimated parameters. For this, experimental data for a wood fibre material are generated with special attention to the stop criterion to capture long time kinetic constants. Among five sets of measurements, the best estimate is computed. The reliability of the models is then discussed. After proving the theoretical identifiability of the unknown parameters for each model, the primary identifiability is analysed. It evaluates whether the parameters influence on the model output is sufficient to proceed the parameter estimation with accuracy. For this, a continuous derivative-based approach is adopted. Seven models have a low primary identifiability for at least one parameter. Indeed, when estimating the unknown parameters using the experimental observations, the parameters with low primary identifiability exhibit large uncertainties. Finally, an Approximation Bayesian Computation algorithm is used to simultaneously select the best model and estimate the parameters that best represent the experimental data. The thermodynamic and Feng–Xing models, together with a proposed model in this work, were the best ones selected by this algorithm.

READ FULL TEXT
research
05/29/2019

Evaluation of the reliability of building energy performance models for parameter estimation

The fidelity of a model relies both on its accuracy to predict the physi...
research
02/27/2019

An efficient numerical model for liquid water uptake in porous material and its parameter estimation

The goal of this study is to propose an efficient numerical model for th...
research
05/20/2019

Physics-informed transfer path analysis with parameter estimation using Gaussian processes

Gaussian processes regression is applied to augment experimental data of...
research
11/30/2018

Measuring precise radial velocities and cross-correlation function line-profile variations using a Skew Normal density

Stellar activity is one of the primary limitations to the detection of l...
research
12/02/2019

A Bayesian Inference Framework for Procedural Material Parameter Estimation

Procedural material models have been graining traction in many applicati...
research
04/17/2018

Bayesian parameter estimation for relativistic heavy-ion collisions

I develop and apply a Bayesian method for quantitatively estimating prop...
research
06/28/2022

ABC for model selection and parameter estimation of drill-string bit-rock interaction models and stochastic stability

The bit-rock interaction considerably affects the dynamics of a drill st...

Please sign up or login with your details

Forgot password? Click here to reset