2020 Virtual AIChE Annual Meeting
(334i) Data-Driven Parameter Estimation of Hybrid Models
This submission considers novel methods for estimating parameters of dynamic models containing unknown mechanistic and data-driven parameters. Specifically considered are systems that can be formulated as a series of coupled ordinary differential equations. These methods are compared with traditional approaches to parameter estimation using forward sensitivity analysis. The comparison is further extended to the case where experimental data is low-quality and sparse. Results indicate that methods which merge data-driven models with numerical methods provide better estimates of time-evolved data and their derivatives than purely data-driven approaches. Conclusions for this presentation will identify parameter estimation approaches that accelerate the validation of interpretable models for systems when both data and mechanistic knowledge is limited.
References
- Oliveira, R., Combining first principles modelling and artificial neural networks: a general framework. Computers & Chemical Engineering, 2004. 28(5): p. 755-766.
- Yang, A., E. Martin, and J. Morris, Identification of semi-parametric hybrid process models. Computers & Chemical Engineering, 2011. 35(1): p. 63-70.
Research Interests
My research has focused on investigating methods for merging data-driven tools and mechanistic knowledge for modeling dynamic process data. The algorithms developed enable modelers to accelerate the systematic validation of hypothesized chemical-physical relationships without system-level information. I have further investigated the application of modern tools in automatic differentiation and numerical methods to support automated estimation of complex differential equations. My research interests lie primarily in developing novel solutions for modeling, control and optimization of manufacturing systems and supply chains.