Title of article :
EIGENVECTORS OF COVARIANCE MATRIX FOR OPTIMAL DESIGN OF STEEL FRAMES
Author/Authors :
Pouriyanezhad, E Department of Civil Engineering - Islamic Azad University - Arak Branch, Arak , Rahami, H School of Engineering Science - College of Engineering - University of Tehran, Tehran , Mirhosseini, S.M Department of Civil Engineering - Islamic Azad University - Arak Branch, Arak
Abstract :
In this paper, the discrete method of eigenvectors of covariance matrix has been used to
weight minimization of steel frame structures. Eigenvectors of Covariance Matrix (ECM)
algorithm is a robust and iterative method for solving optimization problems and is inspired
by the CMA-ES method. Both of these methods use covariance matrix in the optimization
process, but the covariance matrix calculation and new population generation in these two
methods are completely different. At each stage of the ECM algorithm, successful
distributions are identified and the covariance matrix of the successful distributions is
formed. Subsequently, by the help of the principal component analysis (PCA), the scattering
directions of these distributions will be achieved. The new population is generated by the
combination of weighted directions that have a successful distribution and using random
normal distribution. In the discrete ECM method, in case of succeeding in a certain number
of cycles the step size is increased, otherwise the step size is reduced. In order to determine
the efficiency of this method, three benchmark steel frames were optimized due to the
resistance and displacement criteria specifications of the AISC-LRFD, and the results were
compared to other optimization methods. Considerable outputs of this algorithm show that
this method can handle the complex problems of optimizing discrete steel frames.
Keywords :
Frame Design Optimization , Discrete Optimization , Meta-Heuristic Algorithms , Eigenvectors Of Covariance Matrix