SYSYMay 8

Learning myopic mixed-integer nonlinear model predictive control from expert demonstrations

arXiv:2605.0740119.5
AI Analysis

For researchers and practitioners in control systems, this work addresses the real-time computational bottleneck of mixed-integer NMPC, enabling its application to systems with hybrid dynamics and discrete actions.

This paper proposes a myopic mixed-integer NMPC framework that uses offline-learned value functions to shorten the prediction horizon, enabling real-time MINMPC. The approach achieves high closed-loop performance with significantly reduced online computation, demonstrated on the Lotka-Volterra fishing problem and a satellite attitude control system.

Applying nonlinear model predictive control (NMPC) to systems with hybrid dynamics or discrete actions typically yields mixed-integer nonlinear programs (MINLPs), whose real-time solution remains a major challenge and limits the applicability of mixed-integer NMPC (MINMPC). This paper proposes a myopic MINMPC framework that incorporates value-function approximation to substantially reduce the online computational burden. Using Bellman's principle of optimality, we shorten the prediction horizon and append a value function learned offline from expert state-action demonstrations via inverse optimization with optimality residual minimization. A central feature is the dual treatment of discrete decisions, whereby integer constraints are relaxed during offline learning to enable KKT-residual-based value function synthesis, while the online controller enforces the true integer constraints to ensure feasibility. The learned value function induces a policy that is approximately policy-consistent with the expert demonstrations. The resulting controller achieves high closed-loop performance with a significantly shorter horizon, enabling real-time MINMPC. The effectiveness of the approach is demonstrated on the Lotka-Volterra fishing problem and a satellite attitude control system with discrete actuators.

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