Chai, RunqiTsourdos, AntoniosSavvaris, AlChai, SenchunXia, YuanqingChen, C. L. Philip2020-03-112020-03-112020-03-05Chai R, Tsourdos A, Savvaris A, et al., (2021) Multiobjective overtaking maneuver planning of autonomous ground vehicles. IEEE Transactions on Cybernetics, IEEE Transactions on Cybernetics, Volume 51, Issue 8, August 2021, pp. 4035-40492168-2267https://doi.org/10.1109/TCYB.2020.2973748https://dspace.lib.cranfield.ac.uk/handle/1826/15272This paper proposes a computational trajectory optimization framework for solving the problem of multi-objective automatic parking motion planning. Constrained automatic parking maneuver problem is usually difficult to solve because of some practical limitations and requirements. This problem becomes more challenging when multiple objectives are required to be optimized simultaneously. The designed approach employs a swarm intelligent algorithm to produce the trade-off front along the objective space. In order to enhance the local search ability of the algorithm, a gradient operation is utilized to update the solution. In addition, since the evolutionary process tends to be sensitive with respect to the flight control parameters, a novel adaptive parameter controller is designed and incorporated in the algorithm framework such that the proposed method can dynamically balance the exploitation and exploration. The performance of using the designed multi-objective strategy is validated and analyzed by performing a number of simulation and experimental studies. The results indicate that the present approach can provide reliable solutions and it can outperform other existing approaches investigated in this paper.enAttribution-NonCommercial 4.0 InternationalTrajectory optimizationautomatic parkingtrade-off frontadaptive parameter controllerMultiobjective overtaking maneuver planning of autonomous ground vehiclesArticle