- Cary NC, US Mohammadreza Nazari - Philadelphia PA, US Davood Hajinezhad - Cary NC, US Jorge Manuel Gomes da Silva - Durham NC, US Jonathan Lee Walker - Raleigh NC, US Hardi Desai - Raleigh NC, US Robert Blanchard - San Diego CA, US Varunraj Valsaraj - Cary NC, US Ruiwen Zhang - Cary NC, US Weichen Wang - Cary NC, US Ye Liu - Morrisville NC, US Hamoon Azizsoltani - Raleigh NC, US Prathaban Mookiah - San Diego CA, US
International Classification:
G06N 5/02
Abstract:
A computing device trains a machine state predictive model. A generative adversarial network with an autoencoder is trained using a first plurality of observation vectors. Each observation vector of the first plurality of observation vectors includes state variable values for state variables and an action variable value for an action variable. The state variables define a machine state, wherein the action variable defines a next action taken in response to the machine state. The first plurality of observation vectors successively defines sequential machine states to manufacture a product. A second plurality of observation vectors is generated using the trained generative adversarial network with the autoencoder. A machine state machine learning model is trained to predict a subsequent machine state using the first plurality of observation vectors and the generated second plurality of observation vectors. A description of the machine state machine learning model is output.