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Efficient multi-objective synthesis for microwave components based on computational intelligence techniques
Author(s) -
Bo Liu,
Hadi Aliakbarian,
Soheil Radiom,
Guy A. E. Vandenbosch,
Georges Gielen
Publication year - 2012
Publication title -
lirias (ku leuven)
Language(s) - English
Resource type - Conference proceedings
ISSN - 0738-100X
ISBN - 978-1-4503-1199-1
DOI - 10.1145/2228360.2228457
Subject(s) - computer science , benchmark (surveying) , evolutionary algorithm , computational intelligence , evolutionary computation , computation , surrogate model , mathematical optimization , gaussian process , kriging , transformer , algorithm , gaussian , artificial intelligence , machine learning , mathematics , engineering , physics , geodesy , quantum mechanics , voltage , electrical engineering , geography
Multi-objective synthesis for microwave components (e.g.integrated transformer, antenna) is in high demand. Since the embedded electromagnetic (EM) simulations make these tasks very computationally expensive when using traditional multi-objective synthesis methods, efficiency improvement is very important. However, this research is almost blank. In this paper, a new method, called Gaussian Process assisted multi-objective optimization with generation control (GPMOOG), is proposed. GPMOOG uses MOEA/D-DE as the multi-objective optimizer, and a Gaussian Process surrogate model is constructed ON-LINE to predict the results of expensive EM simulations. To avoid false optima for the on-line surrogate model assisted evolutionary computation, a generation control method is used. GPMOOG is demonstrated by a 60GHz integrated transformer, a 1.6GHz antenna and mathematical benchmark problems. Experiments show that compared to directly using a multi-objective evolutionary algorithm in combination with an EM simulator, which is the best known method in terms of solution quality, comparable results can be obtained by GPMOOG, but at about 1/3-1/4 of the computational effort.status: publishe

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