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Online detection and modeling of safety boundaries for aerospace applications using active learning and Bayesian statistics

机译:使用主动学习和贝叶斯统计数据对航空航天应用安全边界进行在线检测和建模

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The behavior of complex aerospace systems is governed by numerous parameters. For safety analysis it is important to understand how the system behaves with respect to these parameter values. In particular, understanding the boundaries between safe and unsafe regions is of major importance. In this paper, we describe a hierarchical Bayesian statistical modeling approach for the online detection and characterization of such boundaries. Our method for classification with active learning uses a particle filter-based model and a boundary-aware metric for best performance. From a library of candidate shapes incorporated with domain expert knowledge, the location and parameters of the boundaries are estimated using advanced Bayesian modeling techniques. The results of our boundary analysis are then provided in a form understandable by the domain expert. We illustrate our approach using a simulation model of a NASA neuro-adaptive flight control system, as well as a system for the detection of separation violations in the terminal airspace.
机译:复杂的航空系统的行为受众多参数支配。对于安全分析,重要的是要了解系统相对于这些参数值的行为。尤其重要的是,了解安全区域和不安全区域之间的边界。在本文中,我们描述了用于此类边界的在线检测和表征的分层贝叶斯统计建模方法。我们的主动学习分类方法使用基于粒子过滤器的模型和边界感知度量,以实现最佳性能。从结合领域专家知识的候选形状库中,可以使用高级贝叶斯建模技术估算边界的位置和参数。然后,以领域专家可以理解的形式提供边界分析的结果。我们使用NASA神经自适应飞行控制系统的仿真模型,以及用于检测终端空域违章分离的系统,来说明我们的方法。

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