2019 AIChE Annual Meeting
(273e) Deep Knowledge Versus Deep Learning
In Rollins et al.(2015), a âdeep knowledge (DK)â modeling approach was applied to a pilot distillation column with nine (9) measured inputs. This work defines DK as the use of highly structured input mapping to the response space that uses differential equations with physically based theoretical structures evidenced by having model parameters with physically interpretable understanding with the ability to set mathematical constraints on them based on well-established first principle dynamic modeling understanding. In the work, the response is the top tray temperature, and a Wiener modeling approach is used that gives excellent test results on eight (8) âfreely existingâ data sets over a three-year period. A âfreely existingâ data set means that no effort was made to intelligently change the input variables based on an optimal experimental design methodology. Actually, Rollins et al. arbitrarily selected all the data sets from this columnâs historical database that contained data sets created by undergraduate chemical engineering students learning how to run the column or running the column for data collection for a lab course in unit operations. The DK methodology of Rollins et al. also embraces a deliberate approach for maximizing information content and input causality based on a comprehensive Jacobian Matrix analysis to identify model weaknesses in the nature of input relationships. The Rollins et al. Wiener results of eight test cases represent the challenge for DL ANN.
This work applies DL ANN to the eight test cases and the results are fourth coming. In addition, for comparison, and to improve ANN modeling, this work applies a principal component neural network (PCNN) methodology that the authors developed successfully in real data study modeling of critical physical properties using asphalt core samples (Ghasemi, et al., 2018a, b). Ghasemi, et al. developed this methodology to fit ANN structures using orthogonal inputs in a DK approach to maximize information in a Jacobian matrix fashion. This is the first application of PCNN known to the authors of this work.
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- LeCun, Yann, Yoshua Bengio, and Geoffrey Hinton. "Deep learning," Nature 521.7553 (2015), 436.
- Rollins, D. K., A. K. Roggendorf, Y. Khor, Y. Mei, P. Lee and S. Loveland, âDynamic Modeling With Correlated Inputs: Theory, Method and Experimental Demonstration,â Ind. Eng. Chem. Res. 2015, 54(7), 2136-2144.
- Ghasemi, P., M. Aslani, D. K. Rollins, R. C. Williams and V. R. Schaefer, "Modeling Rutting Susceptibility of Asphalt Pavement Using Principal Component Pseudo Inputs in Regression and Neural Networks," International Journal of Pavement Research and Technology, https://doi.org/10.1016/j.ijprt.2018.01.003.
- Ghasemi, P., M. Aslani, D. K. Rollins and R. C. Williams, "Principal component analysis-based predictive modeling and optimization of permanent deformation in asphalt pavement: elimination of correlated inputs and extrapolation in modeling," Journal of Structural and Multidisciplinary Optimization, 2018, 1-19.