Litcius/Paper detail

Data-Based Receding Horizon Control of Linear Network Systems

Ahmed Allibhoy, Jorge Cortes

2020IEEE Control Systems Letters50 citationsDOIOpen Access PDF

Abstract

We propose a distributed data-based predictive control scheme to stabilize a network system described by linear dynamics. Agents cooperate to predict the future system evolution without knowledge of the dynamics, relying instead on learning a data-based representation from a single sample trajectory. We employ this representation to reformulate the finite-horizon Linear Quadratic Regulator problem as a network optimization with separable objective functions and locally expressible constraints. We show that the controller resulting from approximately solving this problem using a distributed optimization algorithm in a receding horizon manner is stabilizing. We validate our results through numerical simulations.

Topics & Concepts

Representation (politics)Linear-quadratic regulatorControl theory (sociology)Scheme (mathematics)HorizonModel predictive controlQuadratic equationController (irrigation)Separable spaceMathematical optimizationLinear systemMathematicsOptimization problemComputer scienceOptimal controlControl (management)Quadratic programmingTime horizonControl systemSample (material)Artificial neural networkLinear programmingSimple (philosophy)RegulatorStability (learning theory)Constrained optimizationLinear modelLinear-quadratic-Gaussian controlAdvanced Control Systems OptimizationDistributed Control Multi-Agent SystemsModel Reduction and Neural Networks