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- 2017 Annual Meeting
- Computing and Systems Technology Division
- Computational Methods in Biological and Biomedical Systems I
- (416h) Stability Analysis of Stochastic SchlöGl Model
We have previously discussed the lack of knowledge of the behavior of networks in the mesoscopic area, where the system is sizable yet still under the influence of thermal noise [2]. This lack is largely due to numerical and computational difficulties in stochastically modeling mesoscopic system [2]. We have also provided insight into how these issues can be resolved with the help of ZI-closure scheme method [3]. This is a numerical method to solve chemical master equations by maximizing the entropy of the reacting system.
We employ the Schlögl model reaction network, as a general example of bistable systems. A wide variety of system sizes is studied with ZI-closure. In the cases that the system has one stable attractor, the stochastic system recovers the deterministic behavior for large system sizes. However, the stochastic mesoscopic behavior only partially matches the deterministic solution in the region of kinetic parameter values that result in two stable deterministic attractors. In such cases, the stochastic system recovers only one of the deterministic attractors in the mesoscopic limit.
Stability analysis of the stochastic system provides a better insight into the systemâs behavior. Eigenvalues of the stochastic system are calculated through the Jacobian matrix of the linearized system around the steady state [4]. The correlation between the eigenvalues of the stochastic system at the mesoscopic limit and the ones of the deterministic formalism reveals the underlying stability dynamics of the system. The stochastic formalism can distinguish between attractors and thus retrieves the more stable one. In contrast, the deterministic formalism finds all the stable attractors indistinguishably.