Support Vector Classifier for Constraints Handling in the Design of Inductors for DC-DC Converters

2023 24TH INTERNATIONAL CONFERENCE ON THE COMPUTATION OF ELECTROMAGNETIC FIELDS, COMPUMAG(2023)

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摘要
The design of inductors for non-isolated DC-DC converters aims to obtain a required differential inductance value to limit the current ripple, together with low power losses and reduced component size, desired for highly efficient and power-dense converters. However, small size and low losses are often contrasting objectives. In addition, the design solution feasibility must be evaluated by verifying saturation and thermal constraints. This multi-objective optimisation problem of the inductor design can be effectively tackled through population-based algorithms, such as Artificial Immune Systems. As these approaches require the evaluation of many designs through time-consuming procedures, a classifier system trained in advance to recognise non-admissible solutions can support the search for candidate solutions. The adoption of the Support Vector Classifier for the constraints handling of the inductor design problem is here presented and discussed.
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关键词
Buck Converter,Nonlinear Inductors,Data-driven Classification,Multi-objective Optimisation,Support Vector Machine.
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