2 research outputs found
Balancing of flexible rotors based on evolutionary algorithms
An unbalance in a rotating flexible rotor causes excessive vibration and elastic
deformations with subsequent malfunction and failure. In spite of different techniques
deployed to reduce or eliminate rotor unbalance, it is impossible to remove the unbalance
completely. The unbalance will only be reduced to a residual level. Hence, any other
method that can reduce this residual level further can be considered as an alternative. In
this article, Differential Evolution (DE) and Genetic Algorithm (GA) were successfully
applied as optimization techniques to balance rotating flexible rotors. The unbalancing
challenge is formulated as an optimization problem with an objective function of
minimizing the rotor unbalance by identifying the optimum correction parameters. Modeling
and response analyses were performed in ANSYS while optimizations were conducted in
MATLAB. The results of four balancing cases show that the approaches are robust at both
balancing speed and beyond. Also, the results obtained show that GA performs slightly
better than DE in terms of optimization time and effective reduction of vibration
amplitude