Charged particle swarm optimization (CPSO) is well suited to the dynamic search problem since inter-particle repulsion maintains
population diversity and good tracking can be achieved with a simple algorithm. This work extends the application of CPSO
to the dynamic problem by considering a bi-modal parabolic environment of high spatial and temporal severity. Two types of
charged swarms and an adapted neutral swarm are compared for a number of different dynamic environments which include extreme
‘needle-in-the-haystack’ cases. The results suggest that charged swarms perform best in the extreme cases, but neutral swarms
are better optimizers in milder environments.