Open Access Open Access  Restricted Access Subscription Access

Developing a Genetic Algorithm Based Daily Calorie Recommendation System for Humans


Affiliations
1 Department of Computer Science and Engineering, Chittagong University of Engineering and Technology, Chattogram-4349, Bangladesh

Lately, there has been an increasing fascination with employing genetic algorithms (GAs) to tackle intricate optimization issues. Genetic algorithms (GAs) draw inspiration from natural selection and have demonstrated efficacy indiscovering optimalsolutionsformanyproblems,suchasdietoptimization.This research presents a genetic algorithm (GA) approach to estimate individuals' optimal daily calorieintake. The proposed approach considers the individual's age, gender, height, weight, exercise level, and dietary limitations.In addition, it considers the nutritional composition of various dietary items. The strategy aims to create a daily meal plan that fulfils the individual's calorie requirements and supplies all necessary nutrients. The suggested technique was assessed using a dataset consisting of 100 people. The findings demonstrated that the approach successfully produced dietary regimens that satisfied the individual's specific caloric requirements and encompassed all vital elements. The technique also produced diverse and captivating food menus. Additionally, we recommend a fitness function thatassesses each suggestion's appropriateness for a given user. Ultimately, to completely comprehend the characteristics and functionality of our system, we conducted experimental research using both synthetic data and actual users with varying requirements, preferences, and ambitions.

Keywords

Genetic Algorithms, Personalized Diets, Knowledge Graphs, Food products, Digital Nutrition
User
Notifications
Font Size

Abstract Views: 130




  • Developing a Genetic Algorithm Based Daily Calorie Recommendation System for Humans

Abstract Views: 130  | 

Authors

Rezaul Karim
Department of Computer Science and Engineering, Chittagong University of Engineering and Technology, Chattogram-4349, Bangladesh
Md. Badiuzzaman Biplob
Department of Computer Science and Engineering, Chittagong University of Engineering and Technology, Chattogram-4349, Bangladesh
Mohammad Shamsul Arefin
Department of Computer Science and Engineering, Chittagong University of Engineering and Technology, Chattogram-4349, Bangladesh

Abstract


Lately, there has been an increasing fascination with employing genetic algorithms (GAs) to tackle intricate optimization issues. Genetic algorithms (GAs) draw inspiration from natural selection and have demonstrated efficacy indiscovering optimalsolutionsformanyproblems,suchasdietoptimization.This research presents a genetic algorithm (GA) approach to estimate individuals' optimal daily calorieintake. The proposed approach considers the individual's age, gender, height, weight, exercise level, and dietary limitations.In addition, it considers the nutritional composition of various dietary items. The strategy aims to create a daily meal plan that fulfils the individual's calorie requirements and supplies all necessary nutrients. The suggested technique was assessed using a dataset consisting of 100 people. The findings demonstrated that the approach successfully produced dietary regimens that satisfied the individual's specific caloric requirements and encompassed all vital elements. The technique also produced diverse and captivating food menus. Additionally, we recommend a fitness function thatassesses each suggestion's appropriateness for a given user. Ultimately, to completely comprehend the characteristics and functionality of our system, we conducted experimental research using both synthetic data and actual users with varying requirements, preferences, and ambitions.

Keywords


Genetic Algorithms, Personalized Diets, Knowledge Graphs, Food products, Digital Nutrition