MPPI-IPDDP: A Hybrid Method of Collision-Free Smooth Trajectory Generation for Autonomous Robots

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초록

This article presents a hybrid trajectory optimization method designed to generate collision-free, smooth trajectories for autonomous mobile robots. By combining sampling-based model predictive path integral (MPPI) control with gradient-based interior-point differential dynamic programming (IPDDP), we leverage their respective strengths in exploration and smoothing. The proposed method, MPPI-IPDDP, involves three steps: First, MPPI control is used to generate a coarse trajectory. Second, a collision-free convex corridor is constructed. Third, IPDDP is applied to smooth the coarse trajectory, utilizing the collision-free corridor from the second step. To demonstrate the effectiveness of our approach, we apply the proposed algorithm to trajectory optimization for differential-drive wheeled mobile robots and point-mass quadrotors. In comparisons with other MPPI variants and continuous optimization-based solvers, our method shows superior performance in terms of computational robustness and trajectory smoothness.

키워드

OptimizationTrajectory optimizationPath planningPlanningOptimal controlDynamic programmingCollision avoidanceAutonomous robotsVectorsReal-time systemsCollision-free corridorsdifferential dynamic programming (DDP)model predictive path integral (MPPI)trajectory optimizationMODEL-PREDICTIVE CONTROLALGORITHM
제목
MPPI-IPDDP: A Hybrid Method of Collision-Free Smooth Trajectory Generation for Autonomous Robots
저자
Kim, Min-GyeomJung, MinchanHong, JungeeKim, Kwang-Ki K.
DOI
10.1109/TII.2024.3507940
발행일
2025-07
유형
Article
저널명
IEEE Transactions on Industrial Informatics
21
7
페이지
5037 ~ 5046