实验定位Hopf分岔系统参数估计的改进。

G Cedersund, C Knudsen
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引用次数: 4

摘要

在进行系统识别时,我们有两个信息来源:实验数据和先验知识。许多细胞生物系统都是振荡的,有时我们知道系统达到Hopf分岔的输入。例如,酵母细胞中的糖酵解和Belousov-Zhabotinsky反应就是这种情况,对于这两种体系,都存在大量的猝灭数据,这是体系识别的理想选择。提出了一种基于时间序列估计的Hopf分岔位置先验知识的方法。主要贡献是将先验知识重新表述为约束优化问题的标准表述。这个公式允许应用任何标准方法,包括有关该方法性质的所有理论。通过对原问题的过度参数化来进行重新表述。过度参数化允许形成额外的约束,净效果是减少搜索空间。提出了一种求解问题新形式的方法,并在Brusselator上证明了加入先验知识的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved parameter estimation for systems with an experimentally located Hopf bifurcation.

When performing system identification, we have two sources of information: experimental data and prior knowledge. Many cell-biological systems are oscillating, and sometimes we know an input where the system reaches a Hopf bifurcation. This is the case, for example, for glycolysis in yeast cells and for the Belousov-Zhabotinsky reaction, and for both of these systems there exist significant numbers of quenching data, ideal for system identification. We present a method that includes prior knowledge of the location of a Hopf bifurcation in estimation based on time-series. The main contribution is a reformulation of the prior knowledge into the standard formulation of a constrained optimisation problem. This formulation allows for any of the standard methods to be applied, including all the theories regarding the method's properties. The reformulation is carried out through an over-parametrisation of the original problem. The over-parametrisation allows for extra constraints to be formed, and the net effect is a reduction of the search space. A method that can solve the new formulation of the problem is presented, and the advantage of adding the prior knowledge is demonstrated on the Brusselator.

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