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Energy aware path planning in complex four dimensional environments.

机译:复杂的四维环境中的节能路径规划。

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摘要

This dissertation addresses the problem of energy-aware path planning for small autonomous vehicles. While small autonomous vehicles can perform missions that are too risky (or infeasible) for larger vehicles, the missions are limited by the amount of energy that can be carried on board the vehicle. Path planning techniques that either minimize energy consumption or exploit energy available in the environment can thus increase range and endurance. Path planning is complicated by significant spatial (and potentially temporal) variations in the environment. While the main focus is on autonomous aircraft, this research also addresses autonomous ground vehicles.;Range and endurance of small unmanned aerial vehicles (UAVs) can be greatly improved by utilizing energy from the atmosphere. Wind can be exploited to minimize energy consumption of a small UAV. But wind, like any other atmospheric component , is a space and time varying phenomenon. To effectively use wind for long range missions, both exploration and exploitation of wind is critical.;This research presents a kinematics based tree algorithm which efficiently handles the four dimensional (three spatial and time) path planning problem. The Kinematic Tree algorithm provides a sequence of waypoints, airspeeds, heading and bank angle commands for each segment of the path. The planner is shown to be resolution complete and computationally efficient. Global optimality of the cost function cannot be claimed, as energy is gained from the atmosphere, making the cost function inadmissible. However the Kinematic Tree is shown to be optimal up to resolution if the cost function is admissible. Simulation results show the efficacy of this planning method for a glider in complex real wind data. Simulation results verify that the planner is able to extract energy from the atmosphere enabling long range missions.;The Kinematic Tree planning framework, developed to minimize energy consumption of UAVs, is applied for path planning in ground robots. In traditional path planning problem the focus is on obstacle avoidance and navigation. The optimal Kinematic Tree algorithm named Kinematic Tree* is shown to find optimal paths to reach the destination while avoiding obstacles. A more challenging path planning scenario arises for planning in complex terrain. This research shows how the Kinematic Tree* algorithm can be extended to find minimum energy paths for a ground vehicle in difficult mountainous terrain.
机译:本文解决了小型自动驾驶汽车的能量感知路径规划问题。虽然小型自动驾驶汽车所执行的任务对大型汽车而言风险太大(或不可行),但这些任务受到车辆上可携带能量的限制。路径规划技术可以最大程度地减少能源消耗或利用环境中可用的能源,从而可以增加航程和续航力。环境中明显的空间(和潜在时间)变化会导致路径规划变得复杂。虽然主要关注自动驾驶飞机,但这项研究也涉及自动驾驶地面飞行器。通过利用大气中的能量可以大大提高小型无人机的飞行距离和续航能力。可以利用风将小型无人机的能耗降至最低。但是,与任何其他大气成分一样,风是时空变化的现象。为了有效地将风用于远程任务,对风的探索和开发都至关重要。本研究提出了一种基于运动学的树算法,该算法可有效处理四维(三个空间和时间)路径规划问题。运动树算法为路径的每个部分提供了一系列的航点,空速,航向和倾斜角度命令。该计划器显示为具有完整的分辨率和高效的计算能力。不能要求成本函数的全局最优性,因为从大气中获取能量,使得成本函数不可取。但是,如果允许使用成本函数,则运动树显示出最高分辨率。仿真结果表明,该计划方法在复杂的实际风数据中对滑翔机的有效性。仿真结果验证了该计划程序能够从大气中提取能量,从而实现远程任务。运动树计划框架旨在将无人机的能耗降至最低,被用于地面机器人的路径计划。在传统的路径规划问题中,重点是避障和导航。展示了名为Kinematic Tree *的最佳运动树算法,该算法可找到到达目的地的最佳路径,同时避开障碍物。在复杂地形中进行规划时,出现了更具挑战性的路径规划方案。这项研究表明,如何扩展“运动树”算法,以找到困难山区的地面车辆的最小能量路径。

著录项

  • 作者

    Chakrabarty, Anjan.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Aerospace engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 151 p.
  • 总页数 151
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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