Title :
Optimization of Position Control of Induction Motors using Compact Genetic Algorithms
Author :
Cupertino, Francesco ; Mininno, Ernesto ; Lino, Erika ; Naso, David
Author_Institution :
Bari Tech. Univ.
Abstract :
This paper describes a design procedure for a cascaded control system of induction motors based on compact genetic algorithms (cGAs). CGAs are search methods that process a probability vector (describing the distribution of a hypothetical population) with update rules inspired to the typical selection and recombination operations of a GA. The cGAs well lend themselves to real-time implementations in constrained, low capacity microcontrollers, as they have reduced memory requirements and evenly distributed computational loads with respect to the standard, population-based GA. This paper investigates the applicability of a cGAs selected from literature to simultaneously optimize the couple of position and speed controllers using a weighted cost function that combines indices about position, speed, and current responses. The search is performed on-line, iteratively experimenting new solutions directly on the induction motor drive. The cascaded control system obtained through genetic search outperforms alternative schemes obtained with linear design techniques
Keywords :
angular velocity control; cascade control; control system synthesis; genetic algorithms; induction motor drives; machine vector control; position control; cascaded control system; compact genetic algorithms; induction motor drive; induction motors; linear design techniques; position control; probability vector; speed controllers; weighted cost function; Algorithm design and analysis; Capacity planning; Constraint optimization; Control systems; Distributed computing; Genetic algorithms; Induction motors; Microcontrollers; Position control; Search methods;
Conference_Titel :
IEEE Industrial Electronics, IECON 2006 - 32nd Annual Conference on
Conference_Location :
Paris
Print_ISBN :
1-4244-0390-1
DOI :
10.1109/IECON.2006.347751