Comparative Analysis of Data-Driven Anomaly Detection Methods

This paper provides a review of three different advanced machine learning algorithms for anomaly detection in continuous data streams from a ground-test firing of a subscale Solid Rocket Motor (SRM). This study compares Orca, one-class support vector machines, and the Inductive Monitoring System (IMS) for anomaly detection on the data streams. We measure the performance of the algorithm with respect to the detection horizon for situations where fault information is available. These algorithms have been also studied by the present authors (and other co-authors) as applied to liquid propulsion systems. The trade space will be explored between these algorithms for both types of propulsion systems.

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Maintainer Ashok Srivastava
Last Updated February 19, 2025, 13:46 (UTC)
Created February 19, 2025, 13:46 (UTC)
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issued 2010-09-22
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