Distributed MPC with ALADIN—A Tutorial

2022 American Control Conference (ACC)(2022)

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摘要
This paper consists of a tutorial on the Augmented Lagrangian based Alternating Direction Inexact Newton method (ALADIN) and its application to distributed model predictive control (MPC). The focus is—for simplicity of presentation—on convex quadratic programming (QP) formulations of MPC. It is explained how ALADIN can be used to synthesize sparse QP solvers for large-scale linear-quadratic optimal control by combining ideas from augmented Lagrangian methods, sequential quadratic programming, as well as barrier or interior point methods. The highlight of this tutorial is a real-time ALADIN variant that can be implemented with a few lines of code yet arriving at a sparse QP solver that can compete with mature open-source and commercial QP solvers in terms of both run-time as well as numerical accuracy. It is discussed why this observation could have far reaching consequences on the future of algorithm and software development in the field of large-scale optimization and MPC.
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关键词
interior point methods,real-time ALADIN variant,sparse QP solver,mature open-source,large-scale optimization,distributed MPC,augmented Lagrangian based alternating direction inexact Newton method,distributed model predictive control,large-scale linear-quadratic optimal control,sequential quadratic programming,convex quadratic programming formulations,software development
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