2006 AIChE Annual Meeting
(695b) Hybrid, Multiscale Algorithm for Simulating Stochastic Systems
Authors
In this talk we present a new, multiscale stochastic algorithm wherein the microsolver is decided on-the-fly, without sacrificing speed or accuracy of the simulation. Specifically, the algorithm seamlessly switches between coarse-grained Monte Carlo and exact SSA methods, as well as stiff and non-stiff algorithms based on instantaneous probability-based conditions. Integrating this adaptive approach with a new relaxation criterion enabled us to reduce the computational load of our original multiscale Monte Carlo algorithm (5) by more than factor of 10, while maintaining simulation accuracy at all scales.
Disparity in time scales is commonly encountered in intracellular signaling networks, rendering their simulation via SSA intractable. Various such networks from biology, such as the heat shock response and gene expression models, will be presented to demonstrate the strengths of this new hybrid, multiscale approach.
References
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