2023 AIChE Annual Meeting
(58f) An Improved Algorithm for Flux Variability Analysis
Authors
In this presentation we describe a new algorithm for FVA that can solve in less than 2n+1 LPs by utilizing the basic feasible solution property of bounded LPs to reduce the number of LPs that are needed to be solved. The proposed algorithm is benchmarked on a problem set of 112 metabolic network models ranging from single cell organisms (iMM904, ect) to a human metabolic system (Recon3D). Showing a reduction in the number of LPs required to solve the FVA problem and thus the time to solve an FVA problem.
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