Title of article
NEW META-HEURISTIC OPTIMIZATION ALGORITHM USING NEURONAL COMMUNICATION
Author/Authors
asil gharebaghi, s. k. n. toosi university of technology - department of civil engineering, ايران , ardalan asl, m. k. n. toosi university of technology - department of civil engineering, ايران
From page
413
To page
431
Abstract
A new meta-heuristic method, based on Neuronal Communication (NC), is introduced in this article. The neuronal communication illustrates how data is exchanged between neurons in neural system. Actually, this pattern works efficiently in the nature. The present paper shows it is the same to find the global minimum. In addition, since few numbers of neurons participate in each step of the method, the cost of calculation is less than the other comparable meta-heuristic methods. Besides, gradient calculation and a continuous domain are not necessary for the process of the algorithm. In this article, some new weighting functions are introduced to improve the convergence of the algorithm. In the end, various benchmark functions and engineering problems are examined and the results are illustrated to show the capability, efficiency of the method. It is valuable to note that the average number of iterations for fifty independent runs of functions have been decreased by using Neuronal Communication algorithm in comparison to a majority of methods.
Keywords
meta , heuristic algorithm , global minimum , neuronal communication.
Journal title
International Journal of Optimization in Civil Engineering
Journal title
International Journal of Optimization in Civil Engineering
Record number
2566713
Link To Document