Invention Grant
- Patent Title: Adaptively learning surrogate model for predicting building system dynamics from system identification model
-
Application No.: US16726038Application Date: 2019-12-23
-
Publication No.: US11409250B2Publication Date: 2022-08-09
- Inventor: Young M. Lee , Zhanhong Jiang , Kirk Drees , Michael Risbeck
- Applicant: Johnson Controls Tyco IP Holdings LLP
- Applicant Address: US WI Milwaukee
- Assignee: Johnson Controls Tyco IP Holdings LLP
- Current Assignee: Johnson Controls Tyco IP Holdings LLP
- Current Assignee Address: US WI Milwaukee
- Agency: Foley & Lardner LLP
- Main IPC: G05B13/04
- IPC: G05B13/04 ; F24F11/64

Abstract:
Systems and methods for training a surrogate model for predicting system states for a building management system based on generated data from a system identification model are disclosed herein. The system identification model is used to generate predicted system parameters of a zone of the building based on historic data from operation of the building equipment. The surrogate model is trained based on the predicted system parameters from the system identification model. Predicted future parameters of the variable state of the building are generated using the surrogate model. The surrogate model is re-trained based on new operational data from the building equipment. An updated series of predicted future parameters is generated using the re-trained surrogate model.
Public/Granted literature
Information query