一种多目标、环境自适应容错定位的α- rsamnyi散度Sigmoïd参数化

Nesrine Harbaoui, Khoder Makkawi, Nourdine Ait Tmazirte, Maan El Badaoui El Najjar
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引用次数: 0

摘要

对于本地化功能来说,同时满足安全性、准确性和可用性是一项具有挑战性的任务。以这些关键绩效指标(kpi)中的一个为目标仍然是可行的,但是当同时预期一个或多个其他需求时,目标就会变得相互对立。为了达到精度,建议采用多传感器数据融合。然而,当涉及到安全关键应用,如自动驾驶汽车时,它仍然不够。对于动态环境中可能影响传感器测量的故障,必须考虑诊断层。检测算法必须在保证高故障灵敏度的同时尽可能降低虚警率,同时考虑导航上下文的变化和目标kpi的变化。本文提出了一种基于无气味信息滤波器的GNSS(全球导航卫星系统)和INS(惯性导航系统)数据融合方法,用于状态估计,该方法由自适应诊断层推动,该诊断层由基于强大参数信息散度α- rsamnyi散度的故障检测和隔离(FDI)方法组成。提出了诊断适应性的概念,采用sigmoïd策略提高残差选取的灵敏度,根据交叉环境检测出最大故障。根据导航上下文的当前约束,通过实现广义逻辑函数来保证每个时刻α的合适选择。在检测步骤之后,每个时刻重新评估决策成本优化的阈值。应用于现场数据,与基于著名的Kullback-Leibler散度的诊断层相比,第一次实验显示了开发的框架有希望的结果。
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An α-Rényi Divergence Sigmoïd Parametrization For a Multi-Objectives and Context-Adaptive Fault Tolerant Localization
For a localization function, meeting together safety, accuracy and availability is a challenging task. Targeting one of these Key Performance Indicators (KPIs) remains feasible but when one or more other requirements are expected at the same time, the objectives become antagonistic. To achieve accuracy, a multi-sensor data fusion is recommended. However, it remains insufficient when it comes to safety critical applications as autonomous vehicle. Indeed, a diagnostic layer has to be considered to treat the presence of faults in dynamic environment, which can affect the sensors measurements. The detection algorithm must ensure high fault sensitivity while keeping false alarm rate as low as possible and taking into account both the change of navigation context and the change of targeted KPIs. This paper proposes a GNSS (Global Navigation Satellite System) and INS (Inertial Navigation system) data fusion approach based on an unscented information filter for state estimation boosted by an adaptive diagnostic layer consisting of a Fault Detection and Isolation (FDI) method based on a powerful parametric information divergence: the α-Rényi divergence. The concept of diagnosis adaptability is developed by applying a sigmoïd strategy in order to increase the sensitivity of the selected residual to detect maximum of faults according to the crossed environment. The suitable selection, at each instant, of α, is ensured through the implementation of a generalized logistic function according to the current constraint of the navigation context. Following the detection step, a decision-cost optimized threshold is reevaluated at each instant. Applied to field data, the first experiments show promising results of the developed framework compared to a diagnostic layer based on the well-known Kullback-Leibler divergence.
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