Oracle Corporation
OFF-DUTY-CYCLE-ROBUST MACHINE LEARNING FOR ANOMALY DETECTION IN ASSETS WITH RANDOM DOWN TIMES

Last updated:

Abstract:

Systems, methods, and other embodiments associated with off-duty-cycle-robust machine learning for anomaly detection in assets with random downtimes are described. In one embodiment, a method includes inferring ranges of asset downtime from spikes in a numerical derivative of a time series signal for an asset; extracting an asset downtime signal from the time series signal based on the inferred ranges of asset downtime; determining that the asset downtime signal carries telemetry based on the variance of the asset downtime signal; training a first machine learning model for the asset downtime signal; detecting a first spike in the numerical derivative of the time signal that indicates a transition to asset downtime; and in response to detection of the first spike, monitoring the time series signal for anomalous activity with the trained first machine learning model.

Status:
Application
Type:

Utility

Filling date:

22 Jul 2021

Issue date:

18 Aug 2022