Please use this identifier to cite or link to this item: http://umt-ir.umt.edu.my:8080/handle/123456789/4716
Title: Interval type-2 fuzzy inference system for tuning adaptive weighted multi-objective genetic algorithm
Authors: Pong, Kuan Peng
Keywords: QA 402.5 .P6 2013
Pong, Kuan Peng
Tesis PPIMG 2013
Mathematical optimization
Issue Date: Oct-2013
Publisher: Terengganu: Universiti Malaysia Terengganu
Abstract: Many real world optimization problems involve multi-objectives. Multi-objective problems are problem with two or more objectives and generally conflicting with each other. Multi-objective optimization algorithms goals are converge to the set of Pareto optimal solutions and maintain of diversity among Pareto optimal solutions. Multi-objective optimization approaches can be divided into classical approaches and evolutionary algorithms. Classical approaches generally convert multi-objective function into single objective function and involve decision makers in the search. Evolutionary optimization algorithms use a population based approach in which a set of solutions evolves new solutions in the next generation. The use of population of solutions helps to simultaneously find a set of Pareto optimal solution, thus making evolutionary optimization computationally efficient. Genetic algorithm parameter is the key factor to determine genetic algorithm performance.
URI: http://hdl.handle.net/123456789/4716
Appears in Collections:Pusat Pengajian Informatik dan Matematik Gunaan

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