- Define the Objective Function: Clearly specify what you're optimizing (minimize or maximize). Incorporate any constraints directly into this function or apply penalties for violations.
- Generate Diverse Solutions: Use your random generation method to create a wide range of initial solutions. Diversity helps explore the solution space effectively and avoids premature convergence.
- Evaluate Each Solution: Apply the objective function to each candidate to compute its fitness.
- Select the Best Solution: Track the solution with the best fitness (lowest for minimization, highest for maximization). Optionally, repeat the process over several iterations using meta-heuristics like Genetic Algorithms or Simulated Annealing for better results.
- Use the Optimal Solution: Once identified, use this best solution in the next equation or application step.
Random generation and optimal solution
7 views (last 30 days)
Show older comments
Hello all
I used the random generation equation to generate a random solution for a meta-heuristic algorithm. Now I try to choose the best optimal solution among the solutions I get and use this optimal solution for another equation. But to do it? Thank you for your help
0 Comments
Answers (1)
Harsh
on 19 Jun 2025
To select the best optimal solution from randomly generated candidates in a meta-heuristic algorithm:
function findBest(solutions, mode): // mode = "min" or "max"
best = None
bestFitness = +∞ if mode == "min" else -∞
for s in solutions:
f = evaluate(s)
if (mode == "min" and f < bestFitness) or (mode == "max" and f > bestFitness):
bestFitness = f
best = s
return best
I hope this resolves your query!
0 Comments
See Also
Categories
Find more on Genetic Algorithm in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!