RONov 13, 2021

Gaussian Process based Stochastic Model Predictive Control for Cooperative Adaptive Cruise Control

arXiv:2111.07162v122 citations
Originality Incremental advance
AI Analysis

This addresses safety and efficiency issues in autonomous vehicle platoons for transportation systems, but it is incremental as it builds on existing CACC and model-based communication methods.

The paper tackles the problem of maintaining safe and efficient vehicle platoons in Cooperative Adaptive Cruise Control (CACC) under low-rate or intermittent communication by using Gaussian processes to model speed trajectories and a hybrid stochastic model predictive control approach, resulting in a controller that reduces reliance on frequent communication while ensuring safety.

Cooperative driving relies on communication among vehicles to create situational awareness. One application of cooperative driving is Cooperative Adaptive Cruise Control (CACC) that aims at enhancing highway transportation safety and capacity. Model-based communication (MBC) is a new paradigm with a flexible content structure for broadcasting joint vehicle-driver predictive behavioral models. The vehicle's complex dynamics and diverse driving behaviors add complexity to the modeling process. Gaussian process (GP) is a fully data-driven and non-parametric Bayesian modeling approach which can be used as a modeling component of MBC. The knowledge about the uncertainty is propagated through predictions by generating local GPs for vehicles and broadcasting their hyper-parameters as a model to the neighboring vehicles. In this research study, GP is used to model each vehicle's speed trajectory, which allows vehicles to access the future behavior of their preceding vehicle during communication loss and/or low-rate communication. Besides, to overcome the safety issues in a vehicle platoon, two operating modes for each vehicle are considered; free following and emergency braking. This paper presents a discrete hybrid stochastic model predictive control, which incorporates system modes as well as uncertainties captured by GP models. The proposed control design approach finds the optimal vehicle speed trajectory with the goal of achieving a safe and efficient platoon of vehicles with small inter-vehicle gap while reducing the reliance of the vehicles on a frequent communication. Simulation studies demonstrate the efficacy of the proposed controller considering the aforementioned communication paradigm with low-rate intermittent communication.

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