Method and apparatus for training a system model including...

Data processing: artificial intelligence – Neural network – Learning task

Reexamination Certificate

Rate now

  [ 0.00 ] – not rated yet Voters 0   Comments 0

Details

C706S015000, C706S023000

Reexamination Certificate

active

11267812

ABSTRACT:
Method and apparatus for training a system model with gain constraints. A method is disclosed for training a steady-state model having an input and an output and a mapping layer for mapping the input to the output, the model comprising a stored representation of a plant or process, and including a linear portion and a non-linear portion, where the non-linear portion includes a function. Input is received to the model, and predicted output computed corresponding to attribute(s) of the plant or process. The predicted output is stored, and is usable to manage the plant or process. The model is trained to optimize a specified objective function subject to one or more constraints, e.g., via a non-linear programming (NLP) optimizer, the constraints including, hard constraint(s) comprising strict limitations on the training in optimizing the objective function, and/or soft constraint(s) comprising a weighted penalty function included in the objective function.

REFERENCES:
patent: 3758764 (1973-09-01), Hamer
patent: 3828171 (1974-08-01), Griffin
patent: 4228509 (1980-10-01), Kennedy
patent: 4230534 (1980-10-01), Stewart
patent: 4349869 (1982-09-01), Prett et al.
patent: 4358822 (1982-11-01), Sanchez
patent: 4368509 (1983-01-01), Li
patent: 4583497 (1986-04-01), Likins, Jr. et al.
patent: 4604714 (1986-08-01), Putman et al.
patent: 4628462 (1986-12-01), Putman
patent: 4639853 (1987-01-01), Rake et al.
patent: 4663703 (1987-05-01), Axelby et al.
patent: 4674029 (1987-06-01), Maudal
patent: 4736316 (1988-04-01), Wallman
patent: 4769766 (1988-09-01), Tung
patent: 4858147 (1989-08-01), Conwell
patent: 4868754 (1989-09-01), Matsumoto
patent: 4922412 (1990-05-01), Lane et al.
patent: 4935886 (1990-06-01), Choka
patent: 4964120 (1990-10-01), Mostashari
patent: 4965713 (1990-10-01), Hong et al.
patent: 5050095 (1991-09-01), Samad
patent: 5111531 (1992-05-01), Grayson et al.
patent: 5159562 (1992-10-01), Putman et al.
patent: 5251285 (1993-10-01), Inoue et al.
patent: 5268834 (1993-12-01), Sanner et al.
patent: 5282130 (1994-01-01), Molnar
patent: 5282261 (1994-01-01), Skeirik
patent: 5285377 (1994-02-01), Sugasaka et al.
patent: 5305230 (1994-04-01), Matsumoto et al.
patent: 5311452 (1994-05-01), Yokota et al.
patent: 5311562 (1994-05-01), Palusamy et al.
patent: 5353207 (1994-10-01), Keeler et al.
patent: 5369345 (1994-11-01), Phan et al.
patent: 5408405 (1995-04-01), Mozumder et al.
patent: 5442544 (1995-08-01), Jelinek
patent: 5467291 (1995-11-01), Fan et al.
patent: 5477444 (1995-12-01), Bhat et al.
patent: 5579439 (1996-11-01), Khan
patent: 5589068 (1996-12-01), Nielsen
patent: 5659667 (1997-08-01), Buescher et al.
patent: 5677609 (1997-10-01), Khan et al.
patent: 5682309 (1997-10-01), Bartusiak et al.
patent: 5704011 (1997-12-01), Hansen et al.
patent: 5710033 (1998-01-01), Hallewell et al.
patent: 5781432 (1998-07-01), Keeler et al.
patent: 5796922 (1998-08-01), Smith
patent: 5828812 (1998-10-01), Khan et al.
patent: 5933345 (1999-08-01), Martin et al.
patent: 6047221 (2000-04-01), Piche et al.
patent: 6278899 (2001-08-01), Piche et al.
patent: 0280948 (1988-07-01), None
patent: 03004993 (1991-10-01), None
patent: WO9315448 (1993-08-01), None
patent: WO9612990 (1996-05-01), None
patent: WO9742553 (1997-11-01), None
Andreas Draeger et al, Model Predictive Control Using Neural Networks, Oct. 1995, IEEE, 0272-1708/95, 61-66.
T. J. Graettinger, N. V. Bhat, K. Heckendorn and J.S. Buck; “Model Predictive Control Using Neural Networks”; AlChE; Apr. 1994; pp. 1-11.
T. Graettinger, N. V. Bhat and J. S. Buck; “Adaptive Control with NeuCOP, the Neural Control and Optimization Package”; IEEE International Conference; 1994.
Kenneth R. Muske, Dan A. Logue and Michael M. Keaton; “Gain Scheduled Model Predictive Control of A Crude Oil Distillation Unit”; AlChE; Aug. 15, 1991; pp. 1-12.
G. D. Martin; “Systematic Process Modeling and Identification for Prediction, Control and Optimization”; Pavilion Invention Disclosure Description; Jun. 9, 1995.
C. E. Garcia, D. M. Prett and M. Morari; “Model Predictive Control: Theory and Practice—A Survey”; Automatica; 1989; pp. 335-348; vol. 25.
D. E. Seborg, T. F. Edgar and D. A. Mellichamp; “Process Dynamics and Control”; 1989; Wiley and Sons; New York, NY.
A. V. Oppenheim and R. W. Schafer; “Digital Signal Processing”; 1975; Prentice-Hall; Englewood Cliffs, NJ.
G. E. B. Box and G. M. Jenkins; “Time Series Analysis”; 1976; Holden-Day; San Francisco, CA.
J. L. Shearer, A. T. Murphy and H. H. Richardson; “Introduction to System Dynamics”; 1967; Addison-Wesley; Reading, MA.
P. Eykhoff; “System Identification”; 1974; John Wiley & Sons; New York, NY.
H. Kurz and W. Goedecke; Digital Parameter-Adaptive Control of Processes with Unknown Dead Time; Automatica; 1981; pp. 245-252; vol. 17, No. 1.
H. -T. Su and T. J. McAvoy; “Integration of Multilayer Perceptron Networks and Linear Dynamic Models; A Hammerstein Modeling Approach”; I&ED Fundamentals; Jul. 1992.
“BrainMaker Professional User's Guide and Reference Manual 4th Edition”; California Scientific Software; Jul. 1993.
Sekine, et al.; European Patent Office Abstract; Application No. 01138748; filed May 31, 1989.

LandOfFree

Say what you really think

Search LandOfFree.com for the USA inventors and patents. Rate them and share your experience with other people.

Rating

Method and apparatus for training a system model including... does not yet have a rating. At this time, there are no reviews or comments for this patent.

If you have personal experience with Method and apparatus for training a system model including..., we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Method and apparatus for training a system model including... will most certainly appreciate the feedback.

Rate now

     

Profile ID: LFUS-PAI-O-3723642

  Search
All data on this website is collected from public sources. Our data reflects the most accurate information available at the time of publication.