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Analysis of operational and mechanical anomalies in scheduled commercial flights using a logarithmic multivariate Gaussian model

机译:使用对数多元高斯模型分析预定商业航班中的操作和机械异常

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摘要

This paper presents a machine learning approach to evaluate the performance of aircrafts using on-board sensor information on commercially scheduled flights with the aim to further improve system health monitoring strategies in air transportation. Logarithmic multivariate Gaussian models are trained to evaluate the performance of aircrafts at different flight phases (takeoff, ascent, cruise, etc.) separately. By including a forward synchronization, feature selection, and mini-batch training process, this model overcomes challenges introduced by the large size and high dimensionality of flight datasets. This framework also addresses the re-sampling issue in existing literature causing difficulties in handling time-series signals with different lengths. For demonstration and validation, the developed model is applied to analyze performance anomalies associated with the mechanical system and pilot operation in a historical flight dataset. Compared with existing literature focusing on similar datasets, this evaluation methodology shows promise in detecting performance anomalies especially at approach and takeoff phases. Therefore, the developed model is expected to be an effective addition to the current anomaly analysis and monitoring technologies for scheduled commercial flights. Applications include assisting transportation management systems by handling large amounts of historical flight datasets to analyze mechanical and operational anomalies, which may potentially improve future aeronautical system design and pilot training.
机译:本文提出了一种机器学习方法,用于在商业预定航班上使用机载传感器信息来评估飞机的性能,目的是进一步改善航空运输中的系统健康监控策略。对数多元高斯模型经过训练,可以分别评估飞机在不同飞行阶段(起飞,上升,巡航等)的性能。通过包括前向同步,特征选择和小批量训练过程,该模型克服了飞行数据集的大尺寸和高维度所带来的挑战。该框架还解决了现有文献中的重采样问题,导致在处理具有不同长度的时间序列信号时遇到困难。为了进行演示和验证,将开发的模型应用于分析与机械系统和历史飞行数据集中的飞行员操作相关的性能异常。与专注于类似数据集的现有文献相比,这种评估方法显示出有望检测出性能异常,尤其是在进近和起飞阶段。因此,开发的模型有望有效地补充当前的定期商业航班异常分析和监视技术。应用程序包括通过处理大量历史飞行数据集来分析机械和操作异常来辅助运输管理系统,这可能会改善未来的航空系统设计和飞行员培训。

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