OAIR的交互式仿真环境

Qiqian Zhang, Miaoliang Zhu, Benye Gui, Shaojun Xu
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引用次数: 1

摘要

由于室外地形的复杂性和机器人任务的多样性,室外自主智能机器人(OAIR)必须在非结构化和不可预测的环境中执行任务,这对仿真环境提出了更高的挑战。因此,本文引入了交互式仿真思想。通过分类,将室外仿真环境划分为几个子环境。通过场景建模语言(SML)建模的环境实体可以根据需求进行交互式编辑。并在路径规划的基础上,引入任务规划方法对复杂环境进行仿真。该方法不仅对路径规划算法进行仿真,而且通过编辑或修改机器人的几何参数和动力学参数来验证智能体的有效性和鲁棒性,从而实现运行环境与任务规划之间的交互仿真。最后,设计了一个可视化的监控工具来评估智能体的性能和协调性。
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The interactive simulation environments of OAIR
Because of the complexity of the outdoor terrain and the variety of the robot missions, the outdoor autonomous intelligent robot (OAIR) has to carry out missions in unstructured and impossibly predicted environment, which brings forward the higher challenge for the simulation environment. So the interactive simulation idea is introduced in This work. By means of classification, the outdoor simulation environments are divided into several sub-environments. The environmental entities modeled by a Scene Modeling Language (SML) can be edited interactively in accordance with requisition. And on the basis of the path-planning, the mission-planning method is introduced to simulate the complicated environment. The method not only simulates path-planning algorithms, but also verifies the validity and robustness of intelligent agents through editing or modifying the robot's geometric, and kinetic parameters to accomplish the interactive simulation between the running environment and the mission-planning. At last, a visual monitoring tool is designed to evaluate the performance and the coordination of the intelligent agents.
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