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Optimal Sampling-Based Motion Planning under Differential Constraints: the Drift Case with Linear Affine Dynamics

机译:微分约束下基于采样的最优运动规划:线性仿射动力学的漂移情况

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摘要

In this paper we provide a thorough, rigorous theoretical framework to assess optimality guarantees of sampling-based algorithms for drift control systems: systems that, loosely speaking, can not stop instantaneously due to momentum. We exploit this framework to design and analyze a sampling-based algorithm (the Differential Fast Marching Tree algorithm) that is asymptotically optimal, that is, it is guaranteed to converge, as the number of samples increases, to an optimal solution. In addition, our approach allows us to provide concrete bounds on the rate of this convergence. The focus of this paper is on mixed time/control energy cost functions and on linear affine dynamical systems, which encompass a range of models of interest to applications (e.g., double-integrators) and represent a necessary step to design, via successive linearization, sampling-based and provably-correct algorithms for non-linear drift control systems. Our analysis relies on an original perturbation analysis for two-point boundary value problems, which could be of independent interest.
机译:在本文中,我们提供了一个全面,严格的理论框架来评估漂移控制系统中基于采样的算法的最优性保证:从广义上来说,由于动量而无法立即停止的系统。我们利用此框架来设计和分析渐近最优的基于采样的算法(差分快速行进树算法),也就是说,随着样本数量的增加,可以保证收敛到最优解。此外,我们的方法允许我们为收敛速度提供具体界限。本文的重点是混合时间/控制能量成本函数和线性仿射动力学系统,其中包括应用程序(例如,双积分器)感兴趣的一系列模型,并代表了通过连续线性化进行设计的必要步骤,非线性漂移控制系统的基于采样且可证明正确的算法。我们的分析依赖于对两点边值问题的原始扰动分析,该问题可能是独立引起的。

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