2018 AIChE Annual Meeting
(642d) Improving Speed and Efficiency of Global Sensitivity Analysis Using Metamodeling-Based Approach: A Case Study on Wastewater Treatment Plant Modeling
Authors
This study explores applications of these surrogate models for performing global sensitivity analysis of models used within the BSM2 framework. To this end, three different scenarios are framed. The first scenario looks into the case of uncertain influent fractionation (pollutant loads), the second into the uncertain stoichiometric and biokinetic parameters of Activated Sludge Model 1 (ASM1) whereas the third investigates sensitivity of secondary settler model to hydraulics and design related parameters. Experimental designs (i.e. learning sample) are generated using two different space-filling sampling algorithms, i.e., Latin hypercube sampling and Sobol sequence (quasi-Monte Carlo) and surrogate models of type PCA using least angle regression and GP model are constructed. Confidence intervals of the sensitivity indices are also estimated using the bootstrap method for PCE and the internal model structure of GP. Sobol sensitivity indices of metamodeling-based approach showed great similarity with those obtained from MC approach for each of the investigated scenarios, yet with much faster computation times. An experimental design size of 200 was found to be adequate to construct efficient surrogate models. Effect of using different sampling algorithms was found negligible. Further, the obtained results also suggest surrogate models can efficiently be used to replace complex mechanistic models used in wastewater treatment for complex modelling needs.
References
Sin, G., Gernaey, K. V., Neumann, M. B., van Loosdrecht, M. C. M., & Gujer, W. (2011). Global sensitivity analysis in wastewater treatment plant model applications: Prioritizing sources of uncertainty. Water Research, 45(2), 639â651. https://doi.org/10.1016/j.watres.2010.08.025
Cosenza, A., Mannina, G., Vanrolleghem, P. A., & Neumann, M. B. (2013). Global sensitivity analysis in wastewater applications: A comprehensive comparison of different methods. Environmental Modelling and Software, 49, 40â52. https://doi.org/10.1016/j.envsoft.2013.07.009
Ramin, E., Flores-Alsina, X., Sin, G., Gernaey, K. V., Jeppsson, U., Mikkelsen, P. S., & Plósz, B. G. (2014). Influence of selecting secondary settling tank sub-models on the calibration of WWTP models â A global sensitivity analysis using BSM2. Chemical Engineering Journal, 241, 28â34. https://doi.org/10.1016/j.cej.2013.12.015
Sudret, B. (2008). Global sensitivity analysis using polynomial chaos expansions. Reliability Engineering and System Safety, 93(7), 964â979. https://doi.org/10.1016/j.ress.2007.04.002
Marrel, A., Iooss, B., Laurent, B., & Roustant, O. (2009). Calculations of Sobol indices for the Gaussian process metamodel. Reliability Engineering & System Safety, 94(3), 742â751. https://doi.org/10.1016/j.ress.2008.07.008