Hybridization of P Systems and Particle Swarm Optimization for Function Optimization

This paper describes the broad framework for the hybridization of P-systems or Membrane Computing and Particle Swarm Optimization with a view to minimize nonlinear optimization problems. The paper highlights that very few papers are available on the hybridization and concludes that a lot of scope of research is possible in this domain.

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