无人系统的“小数据”异常检测

Aaron Radke, Sheri Cymrot, Kevin A'Heam, Aaron Wagner, Blaire Angle
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引用次数: 3

摘要

本文提出了一种低成本、平台无关的无人系统异常检测系统的方法,该系统可以从有限的数据和计算资源中学习正常的操作条件,并随着时间的推移跟踪这些条件的偏差。机器学习和自动异常检测在大数据领域的应用已经出现爆炸式增长,因为可以获得大量的历史数据和广泛的计算资源。然而,在无人系统的情况下,可用的历史数据通常有限,计算资源通常仅限于类似手机的嵌入式设备。我们讨论了在这种“小数据”背景下异常检测的两种算法的应用:1)稀疏建模和2)T-Digest。这些算法还被设计和选择为跨多个目标应用程序域通用地执行,使用独立的运行状况监视传感器盒和非侵入性传感器。声学和惯性传感器已被初步选择来说明和验证系统的能力和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
“Small Data” Anomaly Detection for Unmanned Systems
This paper presents an approach for a low cost, platform-agnostic, unmanned systems anomaly detection system that learns normal operating conditions from limited data and computing resources to track deviations from those conditions over time. Machine learning and automatic anomaly detection use has exploded in the Big Data arena with the availability of large volumes of historical data and extensive computing resources. However, in the case of unmanned systems, there is typically limited historical data available and computational resources are often restricted to embedded devices similar to cell phones. We discuss the application of two algorithms for anomaly detection in this “small data” context: 1) sparse modeling and 2) T-Digest. These algorithms are also designed and chosen to perform generically across a number of target application domains with a standalone health monitoring sensor box coupled with noninvasive sensors. Acoustic and inertial sensors have been initially selected to illustrate and validate the system capability and performance.
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