METHOD AND SYSTEM FOR UNSUPERVISED ANOMALY DETECTION AND ACCOUNTABILITY WITH MAJORITY VOTING FOR HIGH-DIMENSIONAL SENSOR DATA

One embodiment can provide a system for detecting anomaly for high-dimensional sensor data associated with one or more machines. During operation, the system can obtain sensor data from a set of sensor associated with one or machines, apply data exploration techniques on the sensor data to automatic...

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Bibliographic Details
Main Authors Sasaki, Yukinori, Raghavan, Ajay, Minegishi, Akira, Jung, Deokwoo, Ogura, Tetsuyoshi, Cheng, Fangzhou, Tajika, Yosuke
Format Patent
LanguageEnglish
Published 10.12.2020
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Summary:One embodiment can provide a system for detecting anomaly for high-dimensional sensor data associated with one or more machines. During operation, the system can obtain sensor data from a set of sensor associated with one or machines, apply data exploration techniques on the sensor data to automatically process sensor data to identify a subset of feature sensors from the available set of feature sensors, apply an unsupervised machine-learning technique to the identified subset of feature sensors and the target sensor to learn a set of pair-wise univariate models, and determine whether and how an anomaly occurs in the operation of the one or more machines based on the set of pair-wise univariate models.
Bibliography:Application Number: US201916431571