Particle Swarm Optimization in MATLAB
Particle Swarm Optimization in MATLAB
Particle Swarm Optimization in MATLAB
MP4 | Video: AVC 1280x720 | Audio: AAC 44KHz 2ch | Duration: 1.5 Hours | Lec: 11 | 220 MB
Genre: eLearning | Language: English
A video tutorial on PSO and its implementation in MATLAB from scratch





Particle Swarm Optimization (PSO) is an intelligent optimization algorithm based on the Swarm Intelligence. It is based on a simple mathematical model, developed by Kennedy and Eberhart in 1995, to describe the social behavior of birds and fish. The model relies mostly on the basic principles of self-organization which is used to describe the dynamics of complex systems. PSO utilizes a very simplified model of social behavior to solve the optimization problems, in a cooperative and intelligent framework. PSO is one of the most useful and famous metaheuristics and it is successfully applied to various optimization problems.

In this video tutorial, implementation of Particle Swarm Optimization (PSO) in MATLAB is discussed in detail. In the first part, theoretical foundations of PSO is briefly reviewed. Next, PSO is implemented line-by-line and from scratch, and every line of code is described in detail. The instructor of this course is Dr. S. Mostapha Kalami Heris, Control and Systems Engineering PhD and member of Yarpiz Team.

After watching this video tutorial, you will be able to know what is PSO, and how it works, and how you can use it to solve your own optimization problems. Also, you will learn how to implement PSO in MATLAB programming language. If you are familiar with other programming languages, it is easy to translate the MATLAB code and rewrite the PSO code in those languages.





Particle Swarm Optimization in MATLAB




Buy Premium Account & Support me

350

Dear visitor, you went to the site as unregistered user.
We recommend you to register or enter the site under your name.
Information
Customers are in the group Guests, can not leave comments in the news.
Adding a comment
Name:*
E-Mail:
Code:
reload, if the code cannot be seen
Enter the code: