TY - JOUR
T1 - Decoupling control based on neural network inverse system for path tracking in multi-actuated unmanned ground vehicles
AU - Li, F.
AU - Zhang, Y.
AU - Chen, H.
AU - Stano, P.
AU - Sorniotti, A.
AU - Tian, H.
AU - Montanaro, U.
AU - Wu, W.
AU - Wei, C.
AU - Hu, J.
N1 - Publisher Copyright:
© 2025 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2025
Y1 - 2025
N2 - This paper proposes a novel multi-layer path tracking and vehicle dynamics control architecture targeting all-wheel-independently-actuated unmanned ground vehicles (AWIA UGVs). The control strategy addresses cross-coupling effects by integrating direct force control (DFC) into a decoupling controller, establishing a direct relationship between the intended vehicle motions and the direct force vector at the centre of gravity. The DFC framework consists of three layers: (i) the reference generation layer, in which a model predictive controller (MPC) generates the desired vehicle motion states to track the reference trajectory; (ii) the state tracking layer, which is responsible for the decoupling tracking control of the vehicle motion vector, based on a neural network inverse (NNI) system; and (iii) the control allocation layer, which distributes the control inputs among the redundant actuators. The DFC effectiveness is evaluated through simulations with an experimentally validated high-fidelity model of a prototype UGV, and preliminary proof-of-concept experiments. The results showcase the superior performance of the decoupling algorithm in terms of trajectory tracking and body control performance, in comparison with benchmarking state-of-the-art MPC-based path tracking and vehicle dynamics control methods.
AB - This paper proposes a novel multi-layer path tracking and vehicle dynamics control architecture targeting all-wheel-independently-actuated unmanned ground vehicles (AWIA UGVs). The control strategy addresses cross-coupling effects by integrating direct force control (DFC) into a decoupling controller, establishing a direct relationship between the intended vehicle motions and the direct force vector at the centre of gravity. The DFC framework consists of three layers: (i) the reference generation layer, in which a model predictive controller (MPC) generates the desired vehicle motion states to track the reference trajectory; (ii) the state tracking layer, which is responsible for the decoupling tracking control of the vehicle motion vector, based on a neural network inverse (NNI) system; and (iii) the control allocation layer, which distributes the control inputs among the redundant actuators. The DFC effectiveness is evaluated through simulations with an experimentally validated high-fidelity model of a prototype UGV, and preliminary proof-of-concept experiments. The results showcase the superior performance of the decoupling algorithm in terms of trajectory tracking and body control performance, in comparison with benchmarking state-of-the-art MPC-based path tracking and vehicle dynamics control methods.
KW - decoupling motion control
KW - neural network inverse system
KW - path tracking
KW - Unmanned ground vehicle
KW - vehicle stability control
UR - http://www.scopus.com/inward/record.url?scp=86000505447&partnerID=8YFLogxK
U2 - 10.1080/00423114.2025.2456035
DO - 10.1080/00423114.2025.2456035
M3 - Article
AN - SCOPUS:86000505447
SN - 0042-3114
JO - Vehicle System Dynamics
JF - Vehicle System Dynamics
ER -