Predictive Converter Control Using Real Time Quadratically Constrained Optimization

2019 12TH ASIAN CONTROL CONFERENCE (ASCC)(2019)

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摘要
The paper considers model predictive control of a voltage source converter with inductive-capacitive (LC) filter. The model of the converter describes the nonlinear effect of the switching on the converter state and the MPC problem is therefore nonlinear and non-convex. An in-depth analysis reveals a convex structure of the converter model, and a nonlinear variable transformation is introduced which allows to equivalently state the MPC problem as a convex, quadratically constrained quadratic problem (QCQP). Thus, a problem which has previously been formulated as a non-convex problem and solved approximately, can be solved exactly without approximation error. The QCQP is solved using a novel first-order method suitable for real time implementation.
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关键词
predictive converter control,voltage source converter,inductive-capacitive filter,LC,MPC problem,convex structure,nonlinear variable transformation,quadratically constrained quadratic problem,QCQP,nonconvex problem,first-order method,real time quadratically constrained optimization
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