Multiple kernel learning for heterogeneous anomaly detection: algorithm and aviation safety case study

Santanu Das, B. Matthews, A. Srivastava, N. Oza
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引用次数: 202

Abstract

The world-wide aviation system is one of the most complex dynamical systems ever developed and is generating data at an extremely rapid rate. Most modern commercial aircraft record several hundred flight parameters including information from the guidance, navigation, and control systems, the avionics and propulsion systems, and the pilot inputs into the aircraft. These parameters may be continuous measurements or binary or categorical measurements recorded in one second intervals for the duration of the flight. Currently, most approaches to aviation safety are reactive, meaning that they are designed to react to an aviation safety incident or accident. In this paper, we discuss a novel approach based on the theory of multiple kernel learning to detect potential safety anomalies in very large data bases of discrete and continuous data from world-wide operations of commercial fleets. We pose a general anomaly detection problem which includes both discrete and continuous data streams, where we assume that the discrete streams have a causal influence on the continuous streams. We also assume that atypical sequences of events in the discrete streams can lead to off-nominal system performance. We discuss the application domain, novel algorithms, and also discuss results on real-world data sets. Our algorithm uncovers operationally significant events in high dimensional data streams in the aviation industry which are not detectable using state of the art methods.
异构异常检测的多核学习:算法与航空安全案例研究
世界范围的航空系统是有史以来最复杂的动力系统之一,并以极快的速度产生数据。大多数现代商用飞机记录数百个飞行参数,包括来自制导、导航和控制系统、航空电子设备和推进系统以及飞行员向飞机输入的信息。这些参数可以是连续测量值,也可以是在飞行期间每隔一秒记录一次的二进制或分类测量值。目前,大多数航空安全方法都是反应性的,这意味着它们是为了应对航空安全事件或事故而设计的。在本文中,我们讨论了一种基于多核学习理论的新方法,以检测来自全球商业船队运营的离散和连续数据的超大数据库中的潜在安全异常。我们提出了一个通用的异常检测问题,其中包括离散和连续数据流,我们假设离散流对连续流有因果影响。我们还假设离散流中的非典型事件序列可能导致非标称系统性能。我们讨论了应用领域,新的算法,也讨论了现实世界数据集的结果。我们的算法揭示了航空工业中高维数据流中的操作重要事件,这些事件是使用最先进的方法无法检测到的。
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