(29h) Modeling and Uncertainty Analysis of Microbial Electrosynthesis of Acetate for Martian Colonization
AIChE Annual Meeting
2019
2019 AIChE Annual Meeting
Computing and Systems Technology Division
Modeling, Control, and Optimization of Manufacturing Systems
Sunday, November 10, 2019 - 5:43pm to 6:02pm
In this work, we present a framework for modeling a continuous bioreactor for carbon fixation through microbial electrosynthesis. An important requirement of the bioreactor model is the ability to reliably forecast the acetate synthesis under climate conditions of Mars and operational uncertainties within the integrated biomanufacturing system. We first present a first-principles dynamic model for a reverse microbial fuel cell reactor, where the bacteria on the cathode surface reduce CO2 into acetate via a supply of electrons [2]. The underlying physical phenomena include coupled micro-scale reaction and transport processes within the biofilm, along with macro-scale mass balances in the bulk liquid [3]. The reaction kinetics are described by the Butler Volmer model for the anode and the Butler-Volmer-Monod model for the cathode [4]. The cathode surface potential is treated as a time-dependent variable related to the efficiency of a photovoltaic panel absorbing light incident to the Martian surface. The climate conditions on Mars due to dust and cloud formations affect the availability of light, acting as a key disturbance to the production rate of acetate. We utilize the RedSun climate modeling software, developed within CUBES [5], to provide a description for the state of the Martian climate and in-situ variables such as temperature, pressure, and the spectral flux based on a geospatial grid of Mars.
For a nominal period of a human mission on Mars, we present a comprehensive parametric study on the system behavior to assess the effects of various reactor design and mission parameters on the quantities of interest, such as the biofilm growth rate and acetate production. The aforementioned findings inform the practical engineering and operational decisions of the integrated biomanufacturing system. Finally, we utilize deep learning methods [6] to develop a surrogate model for the first-principles bioreactor model in order to systematically study the performance of the bioreactor under the varying climate conditions of Mars as well as operational uncertainties of the biomanufacturing system.
References
[1] Menezes A., A., Cumbers J., Hogan J.A., Arkin A., âTowards synthetic biological approaches to resource utilization on space missionsâ, Journal of the Royal Society Interface, 2015, 12 (102), 20140715.
[2] Kazemi, M., Biria , D., Rismani-Yazdi, H., âModelling bio-electrosynthesis in a reverse microbial fuel cell to produce acetate from CO2 and H2Oâ, Phys.Chem.Chem.Phys., 2015, 17, 12561
[3] International Water Association Task Group on Biofilm Modeling, âMathematical Modeling of Biofilmsâ, IWA Publishing, Water Intelligence Online, 2006
[4] Hamelers H.V.M, Ter Heijne A., Stein N., Rozendal R.A., Buisman C., J., N., âButlerâVolmerâMonod model for describing bio-anode polarization curvesâ, Bioresource Technology, 2011, 102, 381-387
[5] âAbel A., Berliner A.J., Mirkovic M., Collins W., Arkin A.P., Clark D.S, âTraversing Photovoltaic and Photoelectrochemical Production Capacity Across the Martian Surfaceâ, to be submitted for publication.
[6]Tripathy R. K. , Bilionis I., Wiart J., âDeep UQ: Learning deep neural network surrogate models for high dimensional uncertainty quantificationâ,Journal of Computational Physics, 2015, 375, 565-588.