(645d) A Generalized Kinetic Model for Transesterification and Saponification
AIChE Annual Meeting
2017
2017 Annual Meeting
Catalysis and Reaction Engineering Division
Alternative Fuels
Thursday, November 2, 2017 - 9:06am to 9:28am
Though biodiesel holds promise as an alternative fuel, its production offers a significant challenge to researchers due to higher production costs compared to the production of petroleum based diesel. Hence, it becomes crucial to model and optimize the biodiesel production process with the aim to achieve lower costs along with meeting the standard property specifications. There are numerous research articles and literature review in modeling, simulation and optimization of biodiesel production process (Aransiola et al., 2014). However, in all of the studies, modeling the reaction kinetics is the foremost important step. The studies regarding kinetics of biodiesel production can be divided into two categories. In the first category (Vicente et al., 2006; Eze et al., 2014), the kinetic models are oversimplified and strongly dependent on the parent oil used for that study. Hence, there are a lot of inconsistencies in the reported values of the kinetic parameters. In the second category (Likozar and Levec, 2014a,b), the effect of the saponification reactions is not accounted for in the model which restricts their application to the case of water-free chemicals only. Therefore, in this article, we address these issues by proposing a kinetic parameter ranking and estimation framework that has the following key components,
- A generalized kinetic model that considers both both transesterification and saponification reactions.
- The model is suitable for any biodiesel feed containing the glycerides formed using the five most common fatty acids viz., Oleic (O), Linoleic (L), Linolenic (Ln), Palmitic (P) and Stearic (S).
- A detailed sensitivity analysis of all model parameters.
- Application of a Bayesian approach to estimate the most important six parameters.
The purpose of this work is to develop a generalized kinetic model for both transesterification and saponification reactions. It consists of a differential mass balance for the process of transesterification and saponification of each glyceride and ester formed by the major fatty acids present in oil. Eq. (1) shows the general form of differential equations in the model.
dCx/dt = fx(C,Î) (1)
where x represents the different species such as glycerides, esters, methanol, glycerol, soaps, and free fatty acids; Cx represents the concentration of species x; and Πrepresents the set of kinetic rate constants. Here, heterogeneity in the reaction system is neglected and the model is assumed to be in pseudo-homogeneous phase. This is a sound assumption for the industrial-scale process as they employ high mixing intensity. Our model consists of 71 species and 257 reactions. User-defined operational inputs for the model are temperature of the reactor, molar ratio of alcohol to oil, catalyst concentration (wt.% based on oil), and the composition of oil. The model response/output is the yield of fatty acid methyl ester (biodiesel) at different time points. The model parameters include the pre-exponential (Arrhenius) factors and the activation energies with respect to all the reactions. This sums up to 2 x 257 = 514 parameters. However, it is not practically feasible to estimate all the parameters of a reaction mechanism simultaneously. Thus, we employ finite difference approach based sensitivity analysis to identify the most significant parameters for estimation. Typically, the number of parameters estimated is limited by the available experimental observations. Here, we estimate the 6 most sensitive parameters using Bayesian approach of parameter estimation and 32 experimental observations. As the direct application of the Bayesian method is challenging over wide ranges in parameter space, it is prudent to employ a preliminary step of optimization to narrow down the ranges using sum of squared errors as an objective function. This is performed in 2 stages viz. a quasi-random global search as the first stage followed by an optimization using the Hooke-Jeeves algorithm. We then employ a Bayesian approach described in (Mosbach et al., 2012; Beers, 2006) over the optimized parameter ranges to study the effects of uncertainties in parameters on the model response. Due to the large number of evaluations of the model required for sampling from the distributions, we employed a surrogate model instead of directly evaluating the original model. The surrogate model was developed using the High Dimensional Model Representation (HDMR) technique.
Resulting distributions showed that we obtain a single optimal value obtained for each of the parameters respectively. We validate our model by conducting parametric studies over varied ranges of temperature, molar ratio of oil to alcohol and catalyst concentration. Our analysis indicates that the model could predict the cetane number and higher heating value of biodiesel formed using various parent oils with an average accuracy of around 3%. Finally, we performed mechanism reduction in order to find the minimum set of reactions that can represent the kinetics of 4 major oils viz., Cottonseed oil, Palm oil, Rapeseed oil and Soybean oil without significant loss of accuracy. We observe that the deviation in the dynamic concentration profiles increased from less than 1% to around 10% as we vary the size of the mechanism from 211 reactions to 175 reactions.
References
- Aransiola, E., Ojumu, T., Oyekola, O., Madzimbamuto, T., Ikhu-Omoregbe, D., 2014. A review of current technology for biodiesel production: State of the art. Biomass and bioenergy 61, 276â297.
- Beers, K. J., 2006. Numerical methods for chemical engineering: applications in Matlab. Cambridge Univer-sity Press.
- Eze, V. C., Harvey, A. P., Phan, A. N., 2015. Determination of the kinetics of biodiesel saponification in alcoholic hydroxide solutions. Fuel 140, 724â730.
- Eze, V. C., Phan, A. N., Harvey, A. P., 2014. A more robust model of the biodiesel reaction, allowing identifica-tion of process conditions for significantly enhanced rate and water tolerance. Bioresource Technology 156, 222â231.
- Keera, S., El Sabagh, S., Taman, A., 2011. Transesterification of vegetable oil to biodiesel fuel using alkaline catalyst. Fuel 90 (1), 42â47.
- Likozar, B., Levec, J., 2014a. Effect of process conditions on equilibrium, reaction kinetics and mass transfer for triglyceride transesterification to biodiesel: experimental and modeling based on fatty acid compo-sition. Fuel Processing Technology 122, 30â41.
- Likozar, B., Levec, J., 2014b. Transesterification of canola, palm, peanut, soybean and sunflower oil with methanol, ethanol, isopropanol, butanol and tert-butanol to biodiesel: Modelling of chemical equilib-rium, reaction kinetics and mass transfer based on fatty acid composition. Applied Energy 123, 108â120.
- Marjanovic,´ A. V., Stamenkovic,´ O. S., Todorovic,´ Z. B., Lazic,´ M. L., Veljkovic,´ V. B., 2010. Kinetics of the base-catalyzed sunflower oil ethanolysis. Fuel 89 (3), 665â671.
- Mendow, G., Veizaga, N., Querini, C., 2011. Ethyl ester production by homogeneous alkaline transesterifica-tion: influence of the catalyst. Bioresource technology 102 (11), 6385â6391.
- Mosbach, S., Braumann, A., Man, P. L., Kastner, C. A., Brownbridge, G. P., Kraft, M., 2012. Iterative improvement of bayesian parameter estimates for an engine model by means of experimental design. Combustion and Flame 159 (3), 1303â1313.
- Richard, R., Thiebaud-Roux, S., Prat, L., 2013. Modelling the kinetics of transesterification reaction of sun-flower oil with ethanol in microreactors. Chemical engineering science 87, 258â269.
- Shay, E. G., 1993. Diesel fuel from vegetable oils: status and opportunities. Biomass and bioenergy 4 (4), 227â242.
- Singh, S., Singh, D., 2010. Biodiesel production through the use of different sources and characterization of oils and their esters as the substitute of diesel: a review. Renewable and Sustainable Energy Reviews 14 (1), 200â216.
- Verma, P., Sharma, M., 2016. Review of process parameters for biodiesel production from different feedstocks. Renewable and Sustainable Energy Reviews 62, 1063â1071.
- Vicente, G., Martinez, M., Aracil, J., 2006. Kinetics of brassica c arinata oil methanolysis. Energy & fuels 20 (4), 1722â1726.
- Vicente, G., MartÃnez, M., Aracil, J., Esteban, A., 2005. Kinetics of sunflower oil methanolysis. Industrial & Engineering Chemistry Research 44 (15), 5447â5454.