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Identification of Instantaneous Anomalies in General Aviation Operations Using Energy Metrics

机译:使用能量度量识别通用航空运营中的瞬时异常

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摘要

The quantification and improvement of safety is one of the most important objectives among the general aviation community. In recent years, machine learning techniques have emerged as an important enabler in the data-driven safety enhancement of aviation operations, with a number of techniques being applied to flight data to identify and isolate anomalous (and potentially unsafe) operations. Energy-based metrics provide measurable indications of the energy state of the aircraft and can be viewed as an objective currency to evaluate various safety-critical conditions across a heterogeneous fleet of aircraft and operations. In this paper, a novel method of identifying instantaneous anomalies for retrospective safety analysis in general aviation using energy-based metrics is proposed. Each flight data record is processed by a sliding window across the multivariate time series of evaluated metrics. A Gaussian mixture model using energy metrics and their variability within each window is fit in order to predict the probability of any instant during the flight being nominal. Instances during flights that deviate from the nominal are isolated to identify potential increased levels of risk. The identified anomalies are compared with traditional methods of safety assessment, such as exceedance detection to highlight the benefits of the developed method. The methodology is demonstrated using flight data records from two representative aircraft for critical phases of flight.
机译:量化和提高安全性是通用航空界最重要的目标之一。近年来,机器学习技术已成为增强航空操作的数据驱动安全性的重要推动力,并且将许多技术应用于飞行数据以识别和隔离异常(以及潜在的不安全)操作。基于能量的度量标准可提供飞机能量状态的可衡量指示,并且可以被视为客观的货币,用以评估飞机和运营机队的各种安全关键条件。在本文中,提出了一种新的方法,该方法使用基于能量的度量标准来识别通用航空中的回顾性安全分析的瞬时异常。每个飞行数据记录都由跨评估指标的多元时间序列的滑动窗口处理。使用能量度量及其在每个窗口内的可变性的高斯混合模型是适合的,以便预测飞行过程中任何瞬间达到标称值的可能性。隔离偏离名义飞行的实例,以识别潜在的风险增加水平。将识别出的异常与传统的安全评估方法(例如,超出检测)进行比较,以突出开发方法的优势。使用来自两架代表性飞机的飞行数据记录在关键飞行阶段演示了该方法。

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    Georgia Inst Technol Atlanta GA 30332 USA|Daniel Guggenheim Sch Aerosp Engn Aerosp Syst Design Lab Atlanta GA 30332 USA;

    Georgia Inst Technol Atlanta GA 30332 USA|Daniel Guggenheim Sch Aerosp Engn Aerosp Syst Design Lab Atlanta GA 30332 USA|Daniel Guggenheim Sch Aerosp Engn Atlanta GA USA;

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