Publication | Open Access
A Neural Network Architecture to Learn Explicit MPC Controllers from Data
12
Citations
16
References
2019
Year
Artificial IntelligenceEngineeringMachine LearningPower Electronics ConverterPower ElectronicsTunable ComplexityLearning ControlSystems EngineeringModel Predictive ControlRobot LearningEnergy ControlElectrical EngineeringModel-based Control TechniqueIntelligent ControlComputer EngineeringComputer ScienceProcess ControlControl ArchitectureLow-complexity EmpcSample Data PointsNeural Network Architecture
We present a methodology to learn explicit Model Predictive Control (eMPC) laws from sample data points with tunable complexity. The learning process is cast in a special Neural Network setting where the coefficients of two linear layers and a parametric quadratic program (pQP) implicit layer are optimized to fit the training data. Thanks to this formulation, powerful tools from the machine learning community can be exploited to speed up the off-line computations through high parallelization. The final controller can be deployed via low-complexity eMPC and the resulting closed-loop system can be certified for stability using existing tools available in the literature. A numerical example on the voltage-current regulation of a multicell DC-DC converter is provided, where the storage and on-line computational demands of the initial controller are drastically reduced with negligible performance impact.
| Year | Citations | |
|---|---|---|
Page 1
Page 1