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Future robotic exploration using honeybee search strategy: Example search for caves on Mars

机译:使用蜜蜂搜索策略的未来机器人探索:在火星上搜索洞穴的示例

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Autonomous control has an increasing role in Earth and Space based applications. High level autonomy can greatly improve planetary exploration and is, in many cases, essential. It has been suggested during the Mars cave exploration programme, that an effective way to explore a larger surface area would be the use of many, small and fully autonomous robots. However, there are many challenges to overcome if such a swarm exploration programme is to be implemented. This paper summarises these challenges and focuses on one of the most crucial one: strategy. Many effective group exploration behaviours can be observed in nature, most of which are optimised to work with agents that have limited capabilities as individuals. For this paper a computer program has been written to simulate the way bees search for new hives and investigate whenever it is an optimal method to search for cave entrances on Mars. It has been found that this method, using simple autonomous robots which can be constructed using available technologies, could greatly improve the speed and range of a planetary exploration mission. The simulation results show that 50 swarm robots can cover an area of over 300 meters square completely in 5 sols while they are searching for cave entrances and returning results to the Lander which is a major performance improvement on any previous mission. Furthermore areas of interests found by the explorers are sorted in order of importance automatically and without the need of computational analysis, hence larger quantities of data were collected from the more important areas. Therefore the system - just like a hive of bees - can make a complex decision easily and quickly to find the place which matches the required criteria best. Using a high performance search strategy such as the one described in this paper is crucial if we plan to search for important resources or even life on Mars and other bodies in the solar system.
机译:自主控制在基于地球和太空的应用中的作用越来越大。高度自治可以极大地改善行星探索,并且在许多情况下是必不可少的。在火星洞穴探索计划中已经提出,探索更大表面积的有效方法是使用许多小型且完全自主的机器人。但是,如果要实施这样的群体探索计划,则有许多挑战需要克服。本文总结了这些挑战,并重点介绍了最关键的挑战之一:战略。自然界中可以观察到许多有效的团队探索行为,其中大多数行为都经过优化,可以与个体能力有限的特工合作。对于本文,已编写了计算机程序来模拟蜜蜂搜索新荨麻疹的方式,并研究何时是在火星上搜索洞穴入口的最佳方法。已经发现,该方法使用可以使用可用技术构造的简单自主机器人,可以大大提高行星探索任务的速度和范围。仿真结果表明,在搜寻洞穴入口并将结果返回到Lander时,有50个成群的机器人可以用5个溶胶完全覆盖300多平方米的区域,这是对先前任务的重大改进。此外,探索者发现的兴趣区域会按重要性的顺序自动排序,而无需进行计算分析,因此,从较重要的区域中收集了更多的数据。因此,该系统就像蜜蜂一样,可以轻松,快速地做出复杂的决定,以找到最符合所需条件的地点。如果我们计划在火星和太阳系其他物体上寻找重要的资源甚至生命,那么使用诸如本文所述的高性能搜索策略至关重要。

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