Route planning for intelligent autonomous land vehicles using hierarchical terrain representation

Nark B. Metea, J. Tsai
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引用次数: 22

Abstract

In this paper, an intelligent navigation system for autonomous land vehicles (ALV) using hierarchical terrain representation has been developed which can successfully negotiate an obstacle and threat-laden terrain, even if nothing is known beforehand about the terrain. The ALV stores new information in its memory as it travels, has the ability to backtrack out of unexpected dead ends, and performs spontaneous decision-making in the field based on local sensor readings. The optimal global route of the ALV journey is obtained using dynamic programming, and decision-making is accomplished via a production rule-based system. Execution examples demonstrate the power of the prototype system to solving navigation problems. This establishes the feasibility of constructing a valid ALV by combining search techniques with artificial intelligence tools such as production rule-based systems.
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基于分层地形表示的智能自主陆地车辆路径规划
在本文中,开发了一种基于分层地形表示的自主陆地车辆(ALV)智能导航系统,该系统可以在事先对地形一无所知的情况下成功地通过障碍物和充满威胁的地形。ALV在行驶过程中将新信息存储在其存储器中,具有从意想不到的死胡同中返回的能力,并根据当地传感器的读数在现场自动执行决策。采用动态规划的方法求解自动驾驶汽车的全局最优路线,并通过基于生产规则的系统进行决策。执行示例演示了原型系统解决导航问题的能力。这建立了通过将搜索技术与基于生产规则的系统等人工智能工具相结合来构建有效ALV的可行性。
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