About


Algorithm:

Initialize all agents;
while (not maximum iterations nor minimum error )
{
    foreach(agent in agents) 
     {
        Calculate function value at agent position;
        If (value < best_value_in_history)
            best_value_in_history= value;
    }

    current_best_value= calculate best value of all current agents positions;

    foreach(agent in agents)
    { 
         agent current_velocity =
             w * current_velocity + 
             p * random_double() * (current_best_value.position - current_position) + 
             g * random_double * (best_value_in_history.position - current_position);
         update_agent_position(current_velocity);
    }

}

where w,p,g are selected by the practitioner and control the behaviour and efficacy of the PSO method...


Third party implementations:

  • RRSI is a C# project to simulate particle swarm optimization on communicating robots.
  • SwarmOps C# and ANSI C codes for several optimization methods, including a few global best PSO variants.
  • Java Based PSO Framework part of the open-source project CIlib (Computational Intelligence Library).
  • PSO visualisation applet randomly generated particle swarm of 12 particles attempts to find the "global maximum" on the landscape.


history|show excerpt|excerpt history