Motion planning for an autonomous Underwater Vehicle via Sampling Based Model Predictive Control

C. Caldwell, D. Dunlap, E. Collins
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引用次数: 47

Abstract

Unmanned Underwater Vehicles (UUVs) can be utilized to perform difficult tasks in cluttered environments such as harbor and port protection. However, since UUVs have nonlinear and highly coupled dynamics, motion planning and control can be difficult when completing complex tasks. Introducing models into the motion planning process can produce paths the vehicle can feasibly traverse. As a result, Sampling-Based Model Predictive Control (SBMPC) is proposed to simultaneously generate control inputs and system trajectories for an autonomous underwater vehicle (AUV). The algorithm combines the benefits of sampling-based motion planning with model predictive control (MPC) while avoiding some of the major pitfalls facing both traditional sampling-based planning algorithms and traditional MPC. The method is based on sampling (i.e., discretizing) the input space at each sample period and implementing a goal-directed optimization (e.g., A*) in place of standard numerical optimization. This formulation of MPC readily applies to nonlinear systems and avoids the local minima which can cause a vehicle to become immobilized behind obstacles. The SBMPC algorithm is applied to an AUV in a cluttered environment and an AUV in a common local minima problem.
基于采样模型预测控制的自主水下航行器运动规划
无人水下航行器(uuv)可用于在混乱的环境中执行困难的任务,如港口和港口保护。然而,由于uuv具有非线性和高度耦合的动力学特性,在完成复杂任务时,运动规划和控制可能很困难。在运动规划过程中引入模型可以生成车辆可行的路径。为此,提出了基于采样的模型预测控制(SBMPC)方法来同时生成自主水下航行器(AUV)的控制输入和系统轨迹。该算法结合了基于采样的运动规划和模型预测控制(MPC)的优点,同时避免了传统基于采样的规划算法和传统MPC所面临的一些主要缺陷。该方法基于在每个采样周期对输入空间进行采样(即离散化),并实现目标导向优化(例如a *)来代替标准的数值优化。这种MPC公式很容易适用于非线性系统,并避免了可能导致车辆在障碍物后面固定的局部最小值。将SBMPC算法应用于混沌环境下的水下机器人和一般局部极小问题下的水下机器人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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