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Flight data processing techniques to identify unusual events.

机译:识别异常事件的飞行数据处理技术。

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Modern aircraft are capable of recording hundreds of parameters during flight. This fact not only facilitates the investigation of an accident or a serious incident, but also provides the opportunity to use the recorded data to predict future aircraft behavior. It is believed that, by analyzing the recorded data, one can identify precursors to hazardous behavior and develop procedures to mitigate the problems before they actually occur. Because of the enormous amount of data collected during each flight, it becomes necessary to identify the segments of data that contain useful information. The objective is to distinguish between typical data points, that are present in the majority of flights, and unusual data points that can be only found in a few flights. The distinction between typical and unusual data points is achieved by using classification procedures.; In this dissertation, the application of classification procedures to flight data is investigated. It is proposed to use a Bayesian classifier that tries to identify the flight from which a particular data point came. If the flight from which the data point came is identified with a high level of confidence, then the conclusion that the data point is unusual within the investigated flights can be made.; The Bayesian classifier uses the overall and conditional probability density functions together with a priori probabilities to make a decision. Estimating probability density functions is a difficult task in multiple dimensions. Because many of the recorded signals (features) are redundant or highly correlated or are very similar in every flight, feature selection techniques are applied to identify those signals that contain the most discriminatory power. In the limited amount of data available to this research, twenty five features were identified as the set exhibiting the best discriminatory power. Additionally, the number of signals is reduced by applying feature generation techniques to similar signals.; To make the approach applicable in practice, when many flights are considered, a very efficient and fast sequential data clustering algorithm is proposed. The order in which the samples are presented to the algorithm is fixed according to the probability density function value. Accuracy and reduction level are controlled using two scalar parameters: a distance threshold value and a maximum compactness factor.
机译:现代飞机能够在飞行过程中记录数百个参数。这一事实不仅有助于调查事故或严重事故,而且还提供了使用记录的数据预测未来飞机行为的机会。人们相信,通过分析记录的数据,人们可以识别出危险行为的先兆,并制定程序以减轻问题的实际发生。由于每次飞行期间收集的数据量很大,因此有必要识别包含有用信息的数据段。目的是区分大多数航班中存在的典型数据点和只能在少数航班中发现的异常数据点。典型数据点和异常数据点之间的区别是通过使用分类程序来实现的。本文研究了分类程序在飞行数据中的应用。建议使用贝叶斯分类器来尝试识别特定数据点来自的航班。如果以较高的置信度确定了数据点所来自的航班,那么可以得出结论,即在所调查的航班中数据点是异常的。贝叶斯分类器使用总体和条件概率密度函数以及先验概率来做出决策。在多个维度上,估计概率密度函数是一项艰巨的任务。由于许多记录的信号(特征)在每次飞行中都是冗余的或高度相关的,或者非常相似,因此应用特征选择技术来识别那些包含最大辨别力的信号。在可用于这项研究的有限数据中,有25个特征被确定为具有最佳区分能力的集合。另外,通过将特征生成技术应用于相似的信号来减少信号的数量。为了使该方法在实践中可行,当考虑许多飞行时,提出了一种非常有效且快速的顺序数据聚类算法。根据概率密度函数值来确定将样本提供给算法的顺序。精度和降低级别使用两个标量参数控制:距离阈值和最大紧凑度因子。

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