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A genetic algorithm-based solution methodology for modular design
Authors:Ali K Kamrani  Ricardo Gonzalez
Affiliation:(1) Department of Industrial Engineering, The University of Houston, Houston, TX 77204, USA;(2) Manufacturing Systems Engineering Department, The University of Michigan, Dearborn, MI 48128-1491, USA
Abstract:Combinatorial optimization problems usually have a finite number of feasible solutions. However, the process of solving these types of problems can be a very long and tedious task. Moreover, the cost and time for getting accurate and acceptable results is usually quite large. As the complexity and size of these problems grow, the current methods for solving problems such as the scheduling problem or the classification problem have become obsolete, and the need for an efficient method that will ensure good solutions for these complicated problems has increased. This paper presents a genetic algorithm (GA)-based method used in the solution of a set of combinatorial optimization problems. A definition of a combinatorial optimization problem is first given. The definition is followed by an introduction to genetic algorithms and an explanation of their role in solving combinatorial optimization problems such as the traveling salesman problem. A heuristic GA is then developed and used as a tool for solving various combinatorial optimization problems such as the modular design problem. A modularity case study is used to test and measure the performance of the developed algorithm.
Keywords:Modular design  similarity coefficients  combinatorial optimizations  genetic algorithms  heuristic methods
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