Sℒ 1 -Simplex: Safe Velocity Regulation of Self-Driving Vehicles in Dynamic and Unforeseen Environments

Author:

Mao Yanbing1ORCID,Gu Yuliang2ORCID,Hovakimyan Naira2ORCID,Sha Lui3ORCID,Voulgaris Petros4ORCID

Affiliation:

1. Wayne State University, Detroit, MI, USA

2. University of Illinois at Urbana–Champaign, Urbana, USA

3. University of Illinois at Urbana–Champaign, Urbana, IL, USA

4. University of Nevada, Reno, NV, USA

Abstract

This article proposes a novel extension of the Simplex architecture with model switching and model learning to achieve safe velocity regulation of self-driving vehicles in dynamic and unforeseen environments. To guarantee the reliability of autonomous vehicles, an ℒ 1 adaptive controller that compensates for uncertainties and disturbances is employed by the Simplex architecture as a verified high-assurance controller (HAC) to tolerate concurrent software and physical failures. Meanwhile, the safe switching controller is incorporated into the HAC for safe velocity regulation in the dynamic (prepared) environments, through the integration of the traction control system and anti-lock braking system. Due to the high dependence of vehicle dynamics on the driving environments, the HAC leverages the finite-time model learning to timely learn and update the vehicle model for ℒ 1 adaptive controller, when any deviation from the safety envelope or the uncertainty measurement threshold occurs in the unforeseen driving environments. With the integration of ℒ 1 adaptive controller, safe switching controller and finite-time model learning, the vehicle’s angular and longitudinal velocities can asymptotically track the provided references in the dynamic and unforeseen driving environments, while the wheel slips are restricted to safety envelopes to prevent slipping and sliding. Finally, the effectiveness of the proposed Simplex architecture for safe velocity regulation is validated by the AutoRally platform.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Control and Optimization,Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference38 articles.

1. [n. d.]. Open Source: Revised AutoRally. Retrieved from https://github.com/ymao578/GM.

2. [n. d.]. Demonstration Video: \(\mathcal {L}_1\) Adaptive Controller v.s. Normal Controller. Retrieved from https://ymao578.github.io/pubs/m2.mp4.

3. [n. d.]. Demonstration Video: M \(\mathcal {L}_{1}\) HAC v.s. \(\mathcal {L}_{1}\) HAC. Retrieved from https://ymao578.github.io/pubs/m1.mp4.

4. Kasey Ackerman, Enric Xargay, Ronald Choe, Naira Hovakimyan, M. Christopher Cotting, Robert B. Jeffrey, Margaret P. Blackstun, Timothy P. Fulkerson, Timothy R. Lau, and Shawn S. Stephens. 2016. \(\mathcal {L}_1\) stability augmentation system for Calspan’s variable-stability learjet. In Proceedings of the AIAA Guidance, Navigation, and Control Conference. 0631.

5. An antilock-braking systems (ABS) control: A technical review;Aly Ayman A.;Intell. Contr. Autom.,2011

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