Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms

Malnutrition problem is the gravest single threat to the world's public health today. Statistics have showed that the number of under-nourished and over-nourished children and adolescents is increasing day by day. Thus, proper menu planning process among menu planners or caterers is important...

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主要作者: Siti Noor Asyikin, Mohd Razali
格式: Thesis
語言:English
English
出版: 2011
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spelling my.uum.etd.28252016-04-28T00:33:40Z http://etd.uum.edu.my/2825/ Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms Siti Noor Asyikin, Mohd Razali QA299.6-433 Analysis Malnutrition problem is the gravest single threat to the world's public health today. Statistics have showed that the number of under-nourished and over-nourished children and adolescents is increasing day by day. Thus, proper menu planning process among menu planners or caterers is important to avoid some diet-related diseases in the hture. Manual calculation of menu planning is unable to consider macronutrients and micronutrients simultaneously due to complexities of data and length of time. In this study, self-adaptive hybrid genetic algorithm (SHGA) approach has been proposed to solve the menu planning problem for Malaysian boarding school students aged 13 to 18 years old. The objectives of our menu planning model are to optimize the budget allocation for each student, to take into consideration the caterer's ability, to llfill the standard recommended nutrient intake (RNI) and maximize the variety of daily meals. New local search was adopted in this study, the insertion search with delete-and-create (ISDC) method, which combined the insertion search (IS) and delete-and-create (DC) local search method. The implementation of IS itself could not guarantee the production of feasible solutions as it only explores a small neighborhood area. Thus, the ISDC was utilized to enhance the search towards a large neighborhood area and the results indicated that the proposed algorithm is able to produce 100% feasible solutions with the best fitness value. Besides that, implementation of self-adaptive probability for mutation has significantly minimized computational time taken to generate the good solutions in just few minutes. Hybridization technique of local search method and self-adaptive strategy have improved the performance of traditional genetic algorithm through balanced exploitation and exploration scheme. Finally, the present study has developed a menu planning prototype for caterers to provide healthy and nutritious daily meals using simple and fhendly user interface. 2011 Thesis NonPeerReviewed application/pdf en http://etd.uum.edu.my/2825/1/Siti_Noor_Asyikin_Mohd_Razali.pdf application/pdf en http://etd.uum.edu.my/2825/2/1.Siti_Noor_Asyikin_Mohd_Razali.pdf Siti Noor Asyikin, Mohd Razali (2011) Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms. PhD. thesis, Universiti Utara Malaysia.
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Electronic Theses
url_provider http://etd.uum.edu.my/
language English
English
topic QA299.6-433 Analysis
spellingShingle QA299.6-433 Analysis
Siti Noor Asyikin, Mohd Razali
Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms
description Malnutrition problem is the gravest single threat to the world's public health today. Statistics have showed that the number of under-nourished and over-nourished children and adolescents is increasing day by day. Thus, proper menu planning process among menu planners or caterers is important to avoid some diet-related diseases in the hture. Manual calculation of menu planning is unable to consider macronutrients and micronutrients simultaneously due to complexities of data and length of time. In this study, self-adaptive hybrid genetic algorithm (SHGA) approach has been proposed to solve the menu planning problem for Malaysian boarding school students aged 13 to 18 years old. The objectives of our menu planning model are to optimize the budget allocation for each student, to take into consideration the caterer's ability, to llfill the standard recommended nutrient intake (RNI) and maximize the variety of daily meals. New local search was adopted in this study, the insertion search with delete-and-create (ISDC) method, which combined the insertion search (IS) and delete-and-create (DC) local search method. The implementation of IS itself could not guarantee the production of feasible solutions as it only explores a small neighborhood area. Thus, the ISDC was utilized to enhance the search towards a large neighborhood area and the results indicated that the proposed algorithm is able to produce 100% feasible solutions with the best fitness value. Besides that, implementation of self-adaptive probability for mutation has significantly minimized computational time taken to generate the good solutions in just few minutes. Hybridization technique of local search method and self-adaptive strategy have improved the performance of traditional genetic algorithm through balanced exploitation and exploration scheme. Finally, the present study has developed a menu planning prototype for caterers to provide healthy and nutritious daily meals using simple and fhendly user interface.
format Thesis
author Siti Noor Asyikin, Mohd Razali
author_facet Siti Noor Asyikin, Mohd Razali
author_sort Siti Noor Asyikin, Mohd Razali
title Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms
title_short Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms
title_full Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms
title_fullStr Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms
title_full_unstemmed Menu Planning Model for Malaysian Boarding School Using Self-Adaptive Hybrid Genetic Algorithms
title_sort menu planning model for malaysian boarding school using self-adaptive hybrid genetic algorithms
publishDate 2011
url http://etd.uum.edu.my/2825/1/Siti_Noor_Asyikin_Mohd_Razali.pdf
http://etd.uum.edu.my/2825/2/1.Siti_Noor_Asyikin_Mohd_Razali.pdf
http://etd.uum.edu.my/2825/
_version_ 1644276804120215552
score 13.153044