Robust Model Predictive Control Design for Autonomous Vehicles with Perception-based Observers

Agentic AI
Published: arXiv: 2509.05201v1
Authors

Nariman Niknejad Gokul S. Sankar Bahare Kiumarsi Hamidreza Modares

Abstract

This paper presents a robust model predictive control (MPC) framework that explicitly addresses the non-Gaussian noise inherent in deep learning-based perception modules used for state estimation. Recognizing that accurate uncertainty quantification of the perception module is essential for safe feedback control, our approach departs from the conventional assumption of zero-mean noise quantification of the perception error. Instead, it employs set-based state estimation with constrained zonotopes to capture biased, heavy-tailed uncertainties while maintaining bounded estimation errors. To improve computational efficiency, the robust MPC is reformulated as a linear program (LP), using a Minkowski-Lyapunov-based cost function with an added slack variable to prevent degenerate solutions. Closed-loop stability is ensured through Minkowski-Lyapunov inequalities and contractive zonotopic invariant sets. The largest stabilizing terminal set and its corresponding feedback gain are then derived via an ellipsoidal approximation of the zonotopes. The proposed framework is validated through both simulations and hardware experiments on an omnidirectional mobile robot along with a camera and a convolutional neural network-based perception module implemented within a ROS2 framework. The results demonstrate that the perception-aware MPC provides stable and accurate control performance under heavy-tailed noise conditions, significantly outperforming traditional Gaussian-noise-based designs in terms of both state estimation error bounding and overall control performance.

Paper Summary

Problem
Autonomous vehicles rely on perception modules to sense their environment and make decisions. However, these modules are prone to noise and uncertainty, which can lead to poor control performance and safety issues. Current approaches assume zero-mean Gaussian noise, but this assumption is often inadequate for capturing the complexities of real-world environments.
Key Innovation
This paper presents a robust model predictive control (MPC) framework that explicitly addresses the non-Gaussian noise inherent in deep learning-based perception modules. The approach uses set-based state estimation with constrained zonotopes to capture biased, heavy-tailed uncertainties while maintaining bounded estimation errors. This allows for more accurate and computationally efficient control performance.
Practical Impact
The proposed framework has significant implications for autonomous vehicle control. By explicitly accounting for non-Gaussian noise, the framework can provide stable and accurate control performance even in the presence of significant disturbances. This could lead to safer and more reliable autonomous vehicles that can operate effectively in a wide range of environments.
Analogy / Intuitive Explanation
Imagine trying to navigate through a dense fog using only your sense of touch. You might rely on sonar or radar sensors to detect obstacles, but these sensors would also be prone to noise and uncertainty. The proposed framework is like having a robust mapping system that can accurately track the terrain despite the noise and uncertainty in the sensor data. This allows for more accurate control decisions and safer navigation through uncertain environments.
Paper Information
Categories:
cs.RO cs.CV cs.LG cs.SY eess.SY
Published Date:

arXiv ID:

2509.05201v1

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