Honeywell International Inc.
Feature extraction and fault detection in a non-stationary process through unsupervised machine learning

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Abstract:

An apparatus, method, and non-transitory machine-readable medium provide for improved feature extraction and fault detection in a non-stationary process through unsupervised machine learning. The apparatus includes a memory and a processor operably connected to the memory. The processor receives training data regarding a field device in an industrial process control and automation system; extracts a meaningful feature from the training data; performs an unsupervised classification to determine a health index for the meaningful feature; identifies a faulty condition of real-time data using the health index of the meaningful feature; and performs a rectifying operation in the industrial process control and automation system for correcting the faulty condition of the field device.

Status:
Grant
Type:

Utility

Filling date:

21 Jun 2018

Issue date:

23 Feb 2021