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A Bayesian Framework for Landing Site Selection during Autonomous Spacecraft Descent

机译:自动宇宙飞船下降期间登陆位点选择的贝叶斯框架

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The success of a landed space exploration mission depends largely on the final landing site. Factors influencing site selection include safety, fuel-consumption, and scientific return. This paper addresses the problem of selecting the best available landing site based on these factors in real-time during autonomous spacecraft descent onto a planetary surface. The problem is modeled probabilistically using Bayesian Networks (BNs). BNs provide a means of representing the causal relationships between variables that impact the quality of a landing site. The final landing site is determined via probabilistic reasoning based on terrain safety derived from on-board sensors, available fuel based on spacecraft descent dynamics, and regions of interest defined by mission scientists.
机译:降落空间勘探任务的成功在很大程度上取决于最终着陆位。影响场地选择的因素包括安全,燃料消耗和科学回报。本文解决了基于这些因素在自动航天器下降到行星表面的实时选择最佳着陆网站的问题。问题是使用贝叶斯网络(BNS)的概率上建模的。 BNS提供了代表影响着陆站点质量的变量之间的因果关系的方法。最终着陆部位是通过基于从车载传感器的地形安全,基于航天器下降动态的可用燃料以及特派团科学家定义的利益区域来确定最终的着陆位点。

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