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A Generalized Stopping Criterion for Real-Time MPC with Guaranteed Stability
Most of the real-time implementations of the stabilizing optimal control
actions suffer from the necessity to provide high computational effort. This
paper presents a cutting-edge approach for real-time evaluation of
linear-quadratic model predictive control (MPC) that employs a novel
generalized stopping criterion, achieving asymptotic stability in the presence
of input constraints. The proposed method evaluates a fixed number of
iterations independent of the initial condition, eliminating the necessity for
computationally expensive methods. We demonstrate the effectiveness of the
introduced technique by its implementation of two widely-used first-order
optimization methods: the projected gradient descent method (PGDM) and the
alternating directions method of multipliers (ADMM). The numerical simulation
confirmed a significantly reduced number of iterations, resulting in
suboptimality rates of less than 2\,\%, while the effort reductions exceeded
80\,\%. These results nominate the proposed criterion for an efficient
real-time implementation method of MPC controllers