An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods
Mechanistic-modeling has been a useful tool to help food scientists in understanding complicated microwave-food interactions, but it cannot be directly used by the food developers for food design due to its resource-intensive characteristic. This study developed and validated an integrated approach...
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doaj-2e7cf7c501a8438ca98502677113adba2021-04-03T23:00:11ZengMDPI AGFoods2304-81582021-04-011076376310.3390/foods10040763An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable FoodsRan Yang0Zhenbo Wang1Jiajia Chen2Department of Food Science, University of Tennessee, Knoxville, TN, 37996, USADepartment of Mechanical, Aerospace and Biomedical Engineering, University of Tennessee, Knoxville, TN, 37996, USADepartment of Food Science, University of Tennessee, Knoxville, TN, 37996, USAMechanistic-modeling has been a useful tool to help food scientists in understanding complicated microwave-food interactions, but it cannot be directly used by the food developers for food design due to its resource-intensive characteristic. This study developed and validated an integrated approach that coupled mechanistic-modeling and machine-learning to achieve efficient food product design (thickness optimization) with better heating uniformity. The mechanistic-modeling that incorporated electromagnetics and heat transfer was previously developed and validated extensively and was used directly in this study. A Bayesian optimization machine-learning algorithm was developed and integrated with the mechanistic-modeling. The integrated approach was validated by comparing the optimization performance with a parametric sweep approach, which is solely based on mechanistic-modeling. The results showed that the integrated approach had the capability and robustness to optimize the thickness of different-shape products using different initial training datasets with higher efficiency (45.9% to 62.1% improvement) than the parametric sweep approach. Three rectangular-shape trays with one optimized thickness (1.56 cm) and two non-optimized thicknesses (1.20 and 2.00 cm) were 3-D printed and used in microwave heating experiments, which confirmed the feasibility of the integrated approach in thickness optimization. The integrated approach can be further developed and extended as a platform to efficiently design complicated microwavable foods with multiple-parameter optimization.https://www.mdpi.com/2304-8158/10/4/763mechanistic-modelingmachine-learningmicrowaveable food designBayesian optimizationthicknessheating uniformity |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ran Yang Zhenbo Wang Jiajia Chen |
spellingShingle |
Ran Yang Zhenbo Wang Jiajia Chen An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods Foods mechanistic-modeling machine-learning microwaveable food design Bayesian optimization thickness heating uniformity |
author_facet |
Ran Yang Zhenbo Wang Jiajia Chen |
author_sort |
Ran Yang |
title |
An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods |
title_short |
An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods |
title_full |
An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods |
title_fullStr |
An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods |
title_full_unstemmed |
An Integrated Approach of Mechanistic-Modeling and Machine-Learning for Thickness Optimization of Frozen Microwaveable Foods |
title_sort |
integrated approach of mechanistic-modeling and machine-learning for thickness optimization of frozen microwaveable foods |
publisher |
MDPI AG |
series |
Foods |
issn |
2304-8158 |
publishDate |
2021-04-01 |
description |
Mechanistic-modeling has been a useful tool to help food scientists in understanding complicated microwave-food interactions, but it cannot be directly used by the food developers for food design due to its resource-intensive characteristic. This study developed and validated an integrated approach that coupled mechanistic-modeling and machine-learning to achieve efficient food product design (thickness optimization) with better heating uniformity. The mechanistic-modeling that incorporated electromagnetics and heat transfer was previously developed and validated extensively and was used directly in this study. A Bayesian optimization machine-learning algorithm was developed and integrated with the mechanistic-modeling. The integrated approach was validated by comparing the optimization performance with a parametric sweep approach, which is solely based on mechanistic-modeling. The results showed that the integrated approach had the capability and robustness to optimize the thickness of different-shape products using different initial training datasets with higher efficiency (45.9% to 62.1% improvement) than the parametric sweep approach. Three rectangular-shape trays with one optimized thickness (1.56 cm) and two non-optimized thicknesses (1.20 and 2.00 cm) were 3-D printed and used in microwave heating experiments, which confirmed the feasibility of the integrated approach in thickness optimization. The integrated approach can be further developed and extended as a platform to efficiently design complicated microwavable foods with multiple-parameter optimization. |
topic |
mechanistic-modeling machine-learning microwaveable food design Bayesian optimization thickness heating uniformity |
url |
https://www.mdpi.com/2304-8158/10/4/763 |
work_keys_str_mv |
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