Journal ArticleUnknown
Machine learning‐based modeling in food processing applications: State of the art
Author Affiliations
Queensland University of Technology, Dhaka University of Engineering & Technology, Washington State University
Published InComprehensive Reviews in Food Science and Food Safety
Year2022
Citations129
Abstract
Food processing is a complex, multifaceted problem that requires substantial human interaction to optimize the various process parameters to minimize energy consumption and ensure better-quality products. The development of a machine learning (ML)-based approach to food processing applications is an exciting and innovative idea for optimizing process parameters and process kinetics to reduce energy consumption, processing time, and ensure better-quality products; however, developing such a novel approach requires significant scientific effort. This paper presents and evaluates ML-based approaches to various food processing operations such as drying, frying, baking, canning, extrusion, encapsulation, and fermentation to predict process kinetics. A step-by-step procedure to develop an ML-based model and its practical implementation is presented. The key challenges of neural network training and testing…
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