Dr. Hesham A. Hegazi

 

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A HYBRID GENETIC-DIRECT SEARCH ALGORITHM FOR THE SHAPE

OPTIMIZATION OF SOLID C-FRAME CROSS-SECTIONS

Ashraf O. Nassef

Assistant Professor , Cairo University, Egypt

[email protected]

Hesham A. Hegazi

Assistant Lecturer , Cairo University, Egypt

[email protected]

Sayed M. Metwalli

Professor of Machine Design , Cairo University, Egypt

[email protected]

KEYWORDS

Shape optimization, Genetic algorithms, NURBS, Directsearch.

ABSTRACT

 The hybridization of different optimization methods have been used to find the optimum solution of design problems. While random search techniques have a high probability of achieving global optimality, they usually arrive at a near optimal solution due to their random nature. On the other hand direct search methods are efficient optimization techniques but linger in local minima if the objective function is multi-modal. This paper presents the optimization of C-frame cross-section using a hybrid optimization algorithm. Real coded genetic algorithms is used as a random search method, while Nelder-Mead is used as a direct search method, where the result of the genetic algorithm search is used as the starting point of direct search. Traditionally, the cross-section of C-frame belonged to a set of primitive shapes, which included I, T, trapezoidal, circular and rectangular sections. The cross-sectional shape is represented by a non-uniform rational B-Splines (NURBS) in order to give it a kind of shape flexibility. The results showed that the use of Nelder-Mead with Real coded Genetic Algorithms has been very significant in improving the optimum shape of a solid C-frame cross-section subjected to a combined tension and bending stresses.

(Please contact me for full paper .PDF file)

 
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