Aspects of Structure and Parameters Selection of Control Systems Using Selected Multi-Population Algorithms

In this paper a new approach for automatic design of control systems is presented. It is based on multi-population algorithms and allows to select not only parameters of control systems, but also its structure. Proposed approach was tested on a problem of stabilization of double spring-mass-damp object.

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