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Frontiers of Mechanical Engineering

ISSN 2095-0233

ISSN 2095-0241(Online)

CN 11-5984/TH

Postal Subscription Code 80-975

2018 Impact Factor: 0.989

Front. Mech. Eng.    2018, Vol. 13 Issue (3) : 354-367    https://doi.org/10.1007/s11465-018-0486-x
RESEARCH ARTICLE
Robust cooperation of connected vehicle systems with eigenvalue-bounded interaction topologies in the presence of uncertain dynamics
Keqiang LI1, Feng GAO2(), Shengbo Eben LI1(), Yang ZHENG3, Hongbo GAO1
1. State Key Laboratory of Automotive Safety and Energy, Department of Automotive Engineering, Tsinghua University, Beijing 100084, China
2. School of Automotive Engineering, Chongqing University, Chongqing 400044, China
3. Department of Engineering Science, University of Oxford, Oxford OX13PJ, UK
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Abstract

This study presents a distributed H-infinity control method for uncertain platoons with dimensionally and structurally unknown interaction topologies provided that the associated topological eigenvalues are bounded by a predesigned range. With an inverse model to compensate for nonlinear powertrain dynamics, vehicles in a platoon are modeled by third-order uncertain systems with bounded disturbances. On the basis of the eigenvalue decomposition of topological matrices, we convert the platoon system to a norm-bounded uncertain part and a diagonally structured certain part by applying linear transformation. We then use a common Lyapunov method to design a distributed H-infinity controller. Numerically, two linear matrix inequalities corresponding to the minimum and maximum eigenvalues should be solved. The resulting controller can tolerate interaction topologies with eigenvalues located in a certain range. The proposed method can also ensure robustness performance and disturbance attenuation ability for the closed-loop platoon system. Hardware-in-the-loop tests are performed to validate the effectiveness of our method.

Keywords automated vehicles      platoon      distributed control      robustness     
Corresponding Author(s): Feng GAO,Shengbo Eben LI   
Just Accepted Date: 15 November 2017   Online First Date: 26 December 2017    Issue Date: 11 June 2018
 Cite this article:   
Keqiang LI,Feng GAO,Shengbo Eben LI, et al. Robust cooperation of connected vehicle systems with eigenvalue-bounded interaction topologies in the presence of uncertain dynamics[J]. Front. Mech. Eng., 2018, 13(3): 354-367.
 URL:  
https://academic.hep.com.cn/fme/EN/10.1007/s11465-018-0486-x
https://academic.hep.com.cn/fme/EN/Y2018/V13/I3/354
Fig.1  Heterogeneous vehicular platoon with V2V
Fig.2  Vehicle dynamics and its inverse model
Parameters Units Nominal value Uncertainty
Vehicle parameter M kg 1300 ±15%
ηT ? 0.89 ±5%
if ? 4.43 ?
ig ? [2.71,1.44,1,0.74] ?
r m 0.28 ?
Kb N·m/MPa 1185 ±10%
τb s 0.15 ±15%
τe s 0.3 ±15%
CA kg/m 0.2835 ±10%
f ? 0.02 ±10%
g m/s2 9.81 ?
Working point and environmental disturbance v m/s ? 3?30
ρ rad 0 ?0.15?0.15
vw m/s 0 ?4?4
Tab.1  Key lumped parameters of a typical passenger car
Fig.3  Procedure to identify uncertain model
Fig.4  Identified bode plots at different setting points. (a) Time response of identification; (b) amplitude-frequency curve; (c) phase–frequency curve
Fig.5  Examples of typical communication topologies. (a) Leader following topology; (b) bidirectional topology
Fig.6  Topological decoupling procedure of vehicular platoon system. (a) Coupled system; (b) decoupled system
Fig.7  Bench test system
Fig.8  Virtual scenario of platoon driving in Prescan
Fig.9  Profiles of the lead vehicle. (a) Acceleration of leader; (b) vehicle speed of leader
Fig.10  Possibility function of successful communication with the parameter of distance between communicating vehicles
Fig.11  One period of added external resistances. (a) Wind speed; (b) road slope
Fig.12  Statistical results of communication, which is uncertain and time varying. (a) Possibility of successful connection; (b) distribution of eigenvalues
Fig.13  Maximum and minimum tracking errors under different test conditions. (a) Distance error under normal condition; (b) distance error under disturbed condition; (c) speed error under normal condition; (d) speed error under disturbed condition; (e) acceleration error under normal condition; (f) acceleration error under disturbed condition
Fig.14  Performance limit analysis results. (a) RMS of distance tracking error (unit: dB·m); (b) RMS of speed tracking error (unit: dB·m·s?1)
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