General Electric Company
System modeling, control and optimization

Last updated:

Abstract:

A method for modeling an operation of a system that may include a disturbance rejection model that is configured to generate a predicted value for a system output at a future time. The disturbance rejection model may include a neural network for mapping system inputs to the system output. The method may include the steps of: training the disturbance rejection model per a training dataset; and calculating a confidence metric for the disturbance rejection model. The confidence metric is configured to indicate a probability that a predicted sign of a gain in the system output at the future time made by the disturbance rejection model is correct.

Status:
Grant
Type:

Utility

Filling date:

30 Dec 2016

Issue date:

18 Feb 2020