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Application of a Bayesian Statistical Framework for Planetary Protection as a Means of Verifying Low-Biomass, Zero-Inflated Test Data from Spacecraft

机译:贝叶斯统计框架在行星保护中的应用作为验证低生物量的手段,来自航天器的零充气测试数据

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Planetary Protection is applicable for missions to biologically sensitive targets of interest in the solar system. For robotic missions landing on the Martian surface, Earth-based biological contamination must be reduced, controlled, and monitored to adhere to forward planetary protection requirements. To address the overall biological load limit and microbial density requirements per spacecraft each component is tracked based on its manufacturing pedigree and/or directly assessed using a direct sampling technique with either a swab or wipe. The tracking and reporting of requirements compliance has varied from mission to mission and reporting of numbers has consistently leaned towards the conservative worst-case scenario. With an increase in the number of missions and mission complexities, the need to establish a technically sound, statistical, and biological solution that provides a single point solution which addresses the distribution of spacecraft contamination becomes critical. Select components of the InSight mission, launched in 2018, have been used as a test case to evaluate the efficacy of applying Bayesian statistics to planetary protection data sets. Eight representative components covering the various bounding cases of high and low surface area, biological count, and sampling devices were analyzed as well as an assembly level case to evaluate the rollup of directly sampled and manufacturing pedigree components. A Bayesian approach was developed leveraging different priors from the zero-inflated data sets and compared to the heritage and existing NASA bioburden assessment approaches. In addition, several noninformative priors were evaluated for use in performing bioburden calculations. The results have demonstrated a viable framework to enable a Bayesian statistical approach to be further developed and utilized for planetary protection requirements assessment.
机译:行星保护适用于在太阳系中的生物学敏感目标的特派团。对于机器人任务登陆火星地面,必须减少,控制和监测地球的生物污染,以坚持行星保护要求。为了解决每个航天器的整体生物负荷限制和微生物密度要求,每个组件都是基于其制造谱系跟踪的,和/或使用直接采样技术用拭子或擦拭方式进行直接评估。要求遵守要求的追踪和报告从使命达到特派团而变化,数量报告一直倾向于保守的最坏情况。随着任务数量和使命复杂的数量增加,需要在技术上的声音,统计和生物学解决方案提供,该解决方案提供了一种解决航天器污染分布的单点解决方案变得至关重要。选择2018年推出的Insight Mission的组成部分已被用作测试案例,以评估将贝叶斯统计数据应用于行星保护数据集的疗效。分析了涵盖了高低表面积,生物计数和采样装置的各种边界病例的八种代表性部件以及组装水平案例,以评估直接采样和制造谱系组件的汇总。开发了一种贝叶斯方法,利用来自零充气数据集的不同前瞻,并与遗产和现有的美国国家航空航天局的生物养牛评估方法相比。此外,评估了几种非信息前沿用于进行生物上的计算。结果证明了一种可行的框架,以便进一步开发贝叶斯统计方法并用于行星保护需求评估。

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