Safety Beyond the Training Data: Robust Out-of-Distribution MPC via Conformalized System Level Synthesis
- URL: http://arxiv.org/abs/2602.12047v1
- Date: Thu, 12 Feb 2026 15:11:44 GMT
- Title: Safety Beyond the Training Data: Robust Out-of-Distribution MPC via Conformalized System Level Synthesis
- Authors: Anutam Srinivasan, Antoine Leeman, Glen Chou,
- Abstract summary: We present a novel framework for robust out-of-distribution planning and control using conformal prediction (CP) and system level synthesis (SLS)<n>We first derive high-confidence model error bounds using weighted CP with a learned, state-control-dependent covariance model.<n>These bounds are integrated into an SLS-based robust nonlinear model predictive control (MPC) formulation, which performs constraint tightening over the prediction horizon via volume-optimized forward reachable sets.
- Score: 3.5174884177930448
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a novel framework for robust out-of-distribution planning and control using conformal prediction (CP) and system level synthesis (SLS), addressing the challenge of ensuring safety and robustness when using learned dynamics models beyond the training data distribution. We first derive high-confidence model error bounds using weighted CP with a learned, state-control-dependent covariance model. These bounds are integrated into an SLS-based robust nonlinear model predictive control (MPC) formulation, which performs constraint tightening over the prediction horizon via volume-optimized forward reachable sets. We provide theoretical guarantees on coverage and robustness under distributional drift, and analyze the impact of data density and trajectory tube size on prediction coverage. Empirically, we demonstrate our method on nonlinear systems of increasing complexity, including a 4D car and a {12D} quadcopter, improving safety and robustness compared to fixed-bound and non-robust baselines, especially outside of the data distribution.
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