Title :
A Kalman Optimization Approach for Solving Some Industrial Electronics Problems
Author :
Toscano, Rosario ; Lyonnet, Patrick
Author_Institution :
Lab. de Tribologie et de Dynamique des Syst., Univ. de Lyon, St. Etienne, France
Abstract :
This paper is concerned with solving nonconvex optimization problems arising in various engineering sciences. In particular, we focus on the design of a robust flux estimator of induction machines and the optimal design of on-chip spiral inductors. To solve these problems, a recently developed optimization method, called the heuristic Kalman algorithm (HKA), is employed. The principle of HKA is to explicitly consider the optimization problem as a measurement process designed to give an estimate of the optimum. A specific procedure, based on the Kalman estimator, was developed to improve the quality of the estimate obtained through the measurement process. The main advantage of HKA, compared to other stochastic optimization methods, lies in the small number of parameters that need to be set by the user. Based on HKA a simple but effective design strategy for robust flux estimator and on-chip spiral inductors is developed. Numerical studies are conducted to demonstrate the validity of the proposed design procedure.
Keywords :
asynchronous machines; concave programming; estimation theory; power inductors; HKA; Kalman estimator; Kalman optimization approach; heuristic Kalman algorithm; induction machine; industrial electronic problem; measurement process design; nonconvex optimization problem; on-chip spiral inductor; optimum estimation; robust flux estimator; stochastic optimization method; Generators; Induction machines; Kalman filters; Magnetic flux; Robustness; Rotors; Stochastic processes; Induction machine; Kalman algorithm; nonconvex optimization; robust flux estimator; spiral inductor; stochastic methods;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2011.2169637