Analysing Infant Food Digestion through Artificial Neural Network

Authors

  • B.J. Luckyn Faculty of Engineering, Rivers State University, Nigeria
  • S. Orike Faculty of Engineering, Rivers State University, Nigeria
  • A. T. Gobo Faculty of Engineering, Rivers State University, Nigeria

DOI:

https://doi.org/10.46610/JoIDACS.2024.v01i01.002

Keywords:

Artificial Intelligent (AI), Artificial Neural Networks (ANN), Digestion, Hood engineering, Infant

Abstract

The symbiotic relationship between nutrition and health is crucial, especially during the formative years of infancy when dietary intake has a significant impact on growth and development. New developments in food engineering highlight how important Artificial Intelligence (AI) is to the best possible optimization of baby food products, making them more inexpensive while maintaining great nutritional characteristics. The way that factors related to food processing affect an infant's ability to digest food and absorb nutrients has a big impact on their development and overall health. To evaluate the nutritional qualities of baby food products, this work elaborates on digestive models. It examines the three stages of digestive models static, semi dynamic, and dynamic shedding light on the enzymes used in each stage and their corresponding benefits and drawbacks. The work also explores the theoretical developments in machine learning and adaptation and how they might be used to predict nutritional characteristics that are important for baby health. However, making use of Artificial Neural Networks (ANN) in a variety of food processing unit operations, this work will navigate the complex dynamics between food processing techniques and infant digestive stages. This method makes it easier to comprehend how food engineering and sophisticated computational models work together to forecast and maximize the nutritional benefits of foods designed specifically for infants. Fundamentally, the combination of cutting edge food engineering methods and digestive modeling especially when it comes to baby food has great potential for guaranteeing that baby food offers are nutrient dense and of high quality, both of which are essential for healthy growth and development.

Author Biographies

B.J. Luckyn, Faculty of Engineering, Rivers State University, Nigeria

Lecturer, Department of Computer and Electronics Engineering

S. Orike, Faculty of Engineering, Rivers State University, Nigeria

Reader, Department of Computer and Electronics Engineering

A. T. Gobo, Faculty of Engineering, Rivers State University, Nigeria

Post Graduate Student, Department of Computer and Electronics Engineering

Published

2024-02-20

How to Cite

Luckyn, B. ., S. Orike, & A. T. Gobo. (2024). Analysing Infant Food Digestion through Artificial Neural Network. Journal of Intelligent Data Analysis and Computational Statistics (p-ISSN: 3049-3056 E-ISSN: 3048-7080), 1(1), 13–19. https://doi.org/10.46610/JoIDACS.2024.v01i01.002

Issue

Section

Articles