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Genetic Programming, Logic Design and Case-Based Reasoning for Obstacle Avoidance

机译:遗传程序设计,逻辑设计和基于案例的推理避免障碍

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This paper draws on three different sets of ideas from computer science to develop a self-learning system capable of delivering an obstacle avoidance decision tree for simple mobile robots. All three topic areas have received considerable attention in the literature but their combination in the fashion reported here is new. This work is part of a wider initiative on problems where human reasoning is currently the most commonly used form of control. Typical examples are in sense and avoid studies for vehicles - for example the current lack of regulator approved sense and avoid systems is a key road-block to the wider deployment of uninhabited aerial vehicles (UAVs) in civil airspaces. The paper shows that by using well established ideas from logic circuit design (the "espresso" algorithm) to influence genetic programming (GP), it is possible to evolve well-structured case-based reasoning (CBR) decision trees that can be used to control a mobile robot. The enhanced search works faster than a standard GP search while also providing improvements in best and average results. The resulting programs are non-intuitive yet solve difficult obstacle avoidance and exploration tasks using a parsimonious and unambiguous set of rules. They are based on studying sensor inputs to decide on simple robot movement control over a set of random maze navigation problems.
机译:本文借鉴了计算机科学领域的三套思路,开发了一种能够为简单的移动机器人提供避障决策树的自学习系统。这三个主题领域在文献中都受到了相当大的关注,但是它们在本文报道的方式中的结合是新的。这项工作是针对人类推理是当前最常用的控制形式的问题的更广泛倡议的一部分。典型的例子是有道理的,并避免对车辆进行研究-例如,当前缺乏监管机构认可的有道理和避免系统是在民用空域更广泛地部署无人飞行器(UAV)的关键障碍。本文表明,通过使用逻辑电路设计中公认的思想(“浓缩咖啡”算法)来影响遗传编程(GP),有可能发展出结构良好的基于​​案例的推理(CBR)决策树,该决策树可用于控制移动机器人。增强型搜索的工作速度比标准GP搜索快,同时还提供了最佳和平均结果的改进。生成的程序是非直觉的,但使用一组简洁明了的规则来解决困难的避障和探索任务。他们基于研究传感器输入来决定对一组随机迷宫导航问题的简单机器人运动控制。

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