I have two problems regarding PSO;
(1). I have a problem in which I need to find the optimal or nearly optimal set of solutions. So PSO should work as an optimizer rather than being a function minimizer. (2). As the fitness function, what I have is a set of parameters that hold values either 1 or zero(binary parameters). Therefore to obtain the parameter values,I have to run an outside boolean function which checks against some empirical rules.
So how to write a rule based fitness function for PSO?
Guys, Please help me. If you happen to know any method/implementation, pl let me know.
Thanks a lot.
EDIT: So sorry sir. This is my first time asking a question. Let me rephrase the question again. Here's what I need to do. I have a set of candidate solutions, each have several properties. Now I need to use PSO to select the best/optimal solution out from that set. Here I do have 9 parameters which can be used to check whether each particle suffice all those conditions. the specialty in those parameters is they have their own range to accept a candidate solution as a optimal one. Here's example of a fitness function and parameters:
fitness=(4*weight+ 3.75*length + 9*pressure .....)
weight: "1" if it's in the range (20-30), else "0" length: "1" if it's below 85, else "0" pressure: "1" if it's greater than 125, else "0"
Note: a particle having length as 60 is better than a particle of length 84 and a particle having pressure as 200 is better than a particle with pressure 126