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Multi-Objective Genetic Algorithm based on Multi-Robot Positions for Scheduling Problems

Jong Hoon Choi, Je Seok Kim, Jin Han Jeong, Jung Min Kim, Jahng Hyon Park
JKSPE 2014;31(8):689-696.
Published online: August 1, 2014
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This paper presents a scheduling problem for a high-density robotic workcell using multi-objective genetic algorithm. We propose a new algorithm based on NSGA-II(Non-dominated Sorting Algorithm-II) which is the most popular algorithm to solve multi-objective optimization problems. To solve the problem efficiently, the proposed algorithm divides the problem into two processes: clustering and scheduling. In clustering process, we focus on multi-robot positions because they are fixed in manufacturing system and have a great effect on task distribution. We test the algorithm by changing multi-robot positions and compare it to previous work. Test results shows that the proposed algorithm is effective under various conditions.

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Multi-Objective Genetic Algorithm based on Multi-Robot Positions for Scheduling Problems
J. Korean Soc. Precis. Eng.. 2014;31(8):689-696.   Published online August 1, 2014
Download Citation

Download a citation file in RIS format that can be imported by all major citation management software, including EndNote, ProCite, RefWorks, and Reference Manager.

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Multi-Objective Genetic Algorithm based on Multi-Robot Positions for Scheduling Problems
J. Korean Soc. Precis. Eng.. 2014;31(8):689-696.   Published online August 1, 2014
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