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논문 기본 정보

자료유형
학술저널
저자정보
Xin Guo (Xi’an University of Technology) Hai-Peng Ren (Xi’an University of Technology) Ding Liu (Xi’an University of Technology)
저널정보
전력전자학회 JOURNAL OF POWER ELECTRONICS JOURNAL OF POWER ELECTRONICS Vol.16 No.2
발행연도
2016.3
수록면
610 - 620 (11page)

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초록· 키워드

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The compound active clamp zero voltage soft switching (CACZVS) three-phase power factor correction (PFC) converter has many advantages, such as high efficiency, high power factor, bi-directional energy flow, and soft switching of all the switches. Triple closed-loop PI controllers are used for the three-phase power factor correction converter. The control objectives of the converter include a fast transient response, high accuracy, and unity power factor. There are six parameters of the controllers that need to be tuned in order to obtain multi-objective optimization. However, six of the parameters are mutually dependent for the objectives. This is beyond the scope of the traditional experience based PI parameters tuning method. In this paper, an improved chaotic particle swarm optimization (CPSO) method has been proposed to optimize the controller parameters. In the proposed method, multi-dimensional chaotic sequences generated by spatiotemporal chaos map are used as initial particles to get a better initial distribution and to avoid local minimums. Pareto optimal solutions are also used to avoid the weight selection difficulty of the multi-objectives. Simulation and experiment results show the effectiveness and superiority of the proposed method.

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Abstract
I. INTRODUCTION
II. THREE PHASE PFC CONVERTER AND ITS MATHEMATICAL MODEL
III. TRIPLE CLOSE-LOOP PI CONTROLLERS DESIGN
IV. TRIPLE CLOSE LOOP PI CONTROLLER PARAMETER OPTIMIZATION BASED ON CPSO
V. SIMULATION AND EXPERIMENTAL RESULTS
VI. CONCLUSION
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UCI(KEPA) : I410-ECN-0101-2016-560-002653983