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- 2005 Annual Meeting
- Multiscale Analysis in Chemical, Materials and Biological Processes
- Hybrid Multiscale Simulation
- (503e) Dynamic Optimization of Stochastic Systems Using in Situ Adaptive Tabulation
We present an extension of the multiscale optimization approach presented in [3] to dynamically evolving systems, restricting ourselves to microscopic domain of the multiscale process model. Specifically, we employ the in situ adaptive tabulation (ISAT) scheme in the context of kMC-based process descriptions to derive approximate multiscale integrators. The derived process integrators are employed towards the efficient solution of dynamic optimization problems using standard search algorithms. ISAT was originally developed in [2] for computationally efficient implementation of combustion chemistry through efficient ``on-demand'' tabulation of the process data and process sensitivities and speed-up factors of the order of 1000 were achieved. However, the underlying stochasticity prohibits direct application of ISAT to processes described by kMC simulations. In this work we outline conditions that guarantee unbiased and accurate estimation of process gradients with respect to initial conditions and process parameters for stochastic systems, thus formulating the basis for extending the applicability of ISAT to such systems. The motivation behind this approach is to circumvent repeated calculations of expensive time-steppers during optimization and simultaneously, whenever possible, utilize the sensitivity information to accurately interpolate process evolution from the tabulated database, without directly computing it from the time-stepper. In order to demonstrate the effectiveness of the proposed scheme, we consider two illustrative examples, namely, a stiff homogeneous chemically reacting system and a surface catalytic oxidation process. In both cases, we solve a dynamic optimization problem to compute optimal control trajectories that maximize pre-specified process objectives. Application of the ISAT algorithm during solution of the optimization problem resulted speed-up factors of about 100.
References
[1] D. Ni and P. D. Christofides. Multivariable predictive control of thin film deposition using a stochastic PDE model. Ind. Eng. Chem. Res., 44:2416-2427, 2005.
[2] S. B. Pope. Computationally e±cient implementation of combustion chemistry using in situ adaptive tabulation. Combust. Theory & Modelling, 1:41-63, 1997.
[3] A. Varshney and A. Armaou. Multiscale optimization using hybrid PDE/kMC process systems with application to thin film growth. Chem. Eng. Sci., Accepted, 2005.