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Simulation for Improvement of Dynamic Path Planning in Autonomous Search and Rescue Robots

机译:自主搜索救援机器人动态路径规划改进的仿真

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摘要

To hasten the process of saving lives after disasters in urban areas, autonomous robots are being looked to for providing mapping, hazard identification and casualty location. These robots need to maximise time in the field without having to recharge and without reducing productivity. This project aims to improve autonomous robot navigation through allowing comparison of algorithms with various weightings, in conjunction with the ability to vary physical parameters of the robot and other factors such as error thresholds/limits. The lack of a priori terrain data in disaster sites, means that robots have to dynamically create a representation of the terrain from received sensor range-data in order to path plan. To reduce the resources used, the affect of input data on the terrain model is analysed such that some points may be culled. The issues ofidentifying hazards within these models are considered with respect to the effect on safe navigation. A modular open-source platform has been created which allows the automatedrunning of experimental trials in conjunction with the implementation and use of other input types, node networks, or algorithms. Varying the terrains, obstacles, initial positions and goals, which a virtual robot is tasked with navigating means that the design, and hence performance, are not tailored to individual situations. Additionally, this demonstrates the variability of scenarios possible. This combination of features allows one to identify the effects of different design decisions, while the use of a game-like graphical interface allows users to readily view and comprehend the scenarios the robot encounters and the paths produced to traverse these environments. The initially planned focus of experimentation lay in testing different algorithms and various weightings, however this was expandedto include different implementations and factors of the input collection, terrain modelling and robot movement. Across a variety of terrain scenarios, the resultant paths and status upon trial completion were analysed and displayed to allow observations to be made. It was found that the path planning algorithms are of less import than initially believed, with other facets of the robotic system having equally significant roles in producing quality paths through a hazardous environment. For fixed view robots, like the choice used in this simulator, it was found that there were issues of incompatibility with A* based algorithms, as the algorithm’s expected knowledge of the areas in all directions regardless of present orientation, and hence they did not perform as they are intended. It is suggested that the behaviour of such algorithms be modified if they are to be used with fixed view systems, in order to gather sufficient data from the surroundings to operate correctly and find paths in difficult terrains. A simulation tool such as this, enables the process of design and testing to be completed with greater ease, and if one can restrain the number of parameters varied, then also with more haste. These benefits will make this simulation tool a valuable addition to the field of USAR research.
机译:为了加快在城市灾难后挽救生命的过程,人们正在寻求自动机器人来提供地图,危害识别和人员伤亡位置。这些机器人需要在野外时间最大化而不必充电,也不降低生产率。该项目旨在通过允许比较具有各种权重的算法,以及改变机器人的物理参数和其他因素(例如错误阈值/极限)的能力,来改善自主机器人的导航。灾难现场缺少先验地形数据,这意味着机器人必须根据接收到的传感器范围数据动态创建地形表示,以便进行路径规划。为了减少使用的资源,分析了输入数据对地形模型的影响,以便可以剔除某些点。考虑到对安全航行的影响,考虑了在这些模型中识别危险的问题。已经创建了一个模块化的开源平台,该平台允许结合其他输入类型,节点网络或算法的实现和使用来自动运行实验试验。虚拟机器人负责导航的各种地形,障碍物,初始位置和目标意味着设计和性能均未针对个别情况进行调整。此外,这证明了方案的可变性。功能的这种组合使人们可以识别不同设计决策的效果,而使用类似游戏的图形界面,则使用户可以轻松查看和理解机器人遇到的场景以及穿越这些环境所产生的路径。最初计划的实验重点是测试不同的算法和各种权重,但是此方法已扩展为包括输入收集,地形建模和机器人移动的不同实现和因素。在各种地形方案中,分析并显示了试验完成时所得到的路径和状态,以便进行观察。人们发现,路径规划算法的重要性不如最初想象的那样,机器人系统的其他方面在通过危险环境产生高质量路径方面也起着同等重要的作用。对于固定视图机器人,像在此模拟器中使用的选择一样,发现存在与基于A *的算法不兼容的问题,因为该算法对所有方向上的区域的预期知识都与当前方向无关,因此它们没有执行如预期的那样。建议将此类算法的行为与固定视图系统一起使用,以便从周围环境收集足够的数据以正确操作并在困难的地形中查找路径。诸如此类的仿真工具可以使设计和测试过程更加轻松地完成,并且如果可以限制变化的参数数量,则也可以更快地完成。这些好处将使该仿真工具成为USAR研究领域的宝贵补充。

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  • 作者

    Hasler Michael Douglas;

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  • 年度 2009
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  • 原文格式 PDF
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