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Metaheuristic Optimization Methods for the Parameter Estimation of Nonlinear Dynamic Biological Systems

机译:非线性动态生物系统参数估计的成立型优化方法

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Developing suitable dynamic models of biochemical pathways is a key issue in systems biology. This paper considers the problem of parameter estimation in nonlinear dynamic models of biological systems. Due to inherent characteristics of the systems, many traditional methods failed. As a result, we applied metaheuristic methods to improve the methodology. In the optimization area, there are two main metaheuristic optimization methods which are Ant Colony System (ACS) and Particle Swarm Optimization (PSO). Our work is to use PSO to solve the global optimization problem of DAE constraints in reduced computational cost. Robust and efficient methods for parameter estimation are of key importance in systems biology and related areas. The metaheuristic algorithms are aggregates of concepts which can define large scale heuristic methods for different problems. It only needs relative few modifications and can be applied in different optimization problems. The metaheuristic method presented has advantages in ensuring the proper solution of these problems by adopting a global optimization approach, while keeping the computational effort under reasonable values.
机译:开发合适的生化途径动态模型是系统生物学的关键问题。本文考虑了生物系统非线性动态模型中参数估计问题。由于系统的固有特征,许多传统方法失败了。结果,我们应用了成型方法来改善方法。在优化区域中,有两个主要的成胸型优化方法是蚁群系统(ACS)和粒子群优化(PSO)。我们的作品是使用PSO来解决降低计算成本的DAE约束的全局优化问题。用于参数估计的鲁棒和有效的方法在系统生物学和相关领域具有重要性。成群质识别算法是概念的聚合,可以为不同的问题定义大规模启发式方法。它只需要相对少量的修改,并且可以应用于不同的优化问题。所提出的成分型方法在通过采用全球优化方法确保适当的解决这些问题的优势,同时保持在合理的值下的计算工作。

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