In this paper a hybrid modeling and system identification method, combining linear least squares regression and artificial neural network techniques, is presented to model a type of dynamic systems which have an incomplete analytical model description. This approach in modeling nonlinear, partially-understood systems is particularly useful to the study of manufacturing processes, where the linear regression portion of the hybrid model is established using a known mathematical model for the process and the neural network is constructed using the residuals from the least squares regression, therefore ensuring a more precise process model for the specific machining setup, tooling selection, workpiece properties, etc. In this paper the method is mathematically proven to give regression coefficients close to those which would be found if only a regression had been performed. The modeling method is then simulated for a macro-scale hard turning process, and the result proves the effectiveness of the proposed hybrid modeling method.
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ASME 2009 International Manufacturing Science and Engineering Conference
October 4–7, 2009
West Lafayette, Indiana, USA
Conference Sponsors:
- Manufacturing Engineering Division
ISBN:
978-0-7918-4362-8
PROCEEDINGS PAPER
A Hybrid Modeling Technique for Partially-Known Systems Using Linear Regression and Neural Network
Andrew J. Joslin,
Andrew J. Joslin
University of Central Florida, Orlando, FL
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Chengying Xu
Chengying Xu
University of Central Florida, Orlando, FL
Search for other works by this author on:
Andrew J. Joslin
University of Central Florida, Orlando, FL
Chengying Xu
University of Central Florida, Orlando, FL
Paper No:
MSEC2009-84217, pp. 365-375; 11 pages
Published Online:
September 20, 2010
Citation
Joslin, AJ, & Xu, C. "A Hybrid Modeling Technique for Partially-Known Systems Using Linear Regression and Neural Network." Proceedings of the ASME 2009 International Manufacturing Science and Engineering Conference. ASME 2009 International Manufacturing Science and Engineering Conference, Volume 2. West Lafayette, Indiana, USA. October 4–7, 2009. pp. 365-375. ASME. https://doi.org/10.1115/MSEC2009-84217
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