Observer-Based Distributed Model Predictive Control for String-Stable Multi-vehicle Systems with Markovian Switching Topology
Wenwei Que, Yang Li, Lu Wang, Wentao Liu, Yougang Bian, Manjiang Hu, Yongfu Li

TL;DR
This paper introduces an observer-based distributed model predictive control approach for vehicle platoons with Markovian switching topologies, ensuring stability and reducing errors despite dynamic communication changes.
Contribution
It develops a fully distributed adaptive observer and a DMPC framework that maintains string stability under stochastic switching topologies.
Findings
Reduces tracking errors in vehicle platoons.
Ensures mean-square stability of the observer.
Maintains string stability despite topology switching.
Abstract
Switching communication topologies can cause instability in vehicle platoons, as vehicle information may be lost during the dynamic switching process. This highlights the need to design a controller capable of maintaining the stability of vehicle platoons under dynamically changing topologies. However, capturing the dynamic characteristics of switching topologies and obtaining complete vehicle information for controller design while ensuring stability remains a significant challenge. In this study, we propose an observer-based distributed model predictive control (DMPC) method for vehicle platoons under directed Markovian switching topologies. Considering the stochastic nature of the switching topologies, we model the directed switching communication topologies using a continuous-time Markov chain. To obtain the leader vehicle's information for controller design, we develop a fully…
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