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首页> 外文期刊>Journal of applied mathematics >Parameter Estimation in Ordinary Differential Equations Modeling via Particle Swarm Optimization
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Parameter Estimation in Ordinary Differential Equations Modeling via Particle Swarm Optimization

机译:基于粒子群算法的常微分方程建模参数估计

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Researchers using ordinary differential equations to model phenomena face two main challenges among others implementing the appropriate model and optimizing the parameters of the selected model. The latter often proves difficult or computationally expensive. Here, we implement Particle Swarm Optimization, which draws inspiration from the optimizing behavior of insect swarms in nature, as it is a simple and efficient method for fitting models to data. We demonstrate its efficacy by showing that it outstrips evolutionary computing methods previously used to analyze an epidemic model.
机译:使用常微分方程对现象进行建模的研究人员面临着两个主要挑战,其中包括实现适当的模型和优化所选模型的参数。后者通常被证明是困难的或计算上昂贵的。在这里,我们实现了粒子群优化,它是从自然界中昆虫群的优化行为中汲取灵感的,因为它是一种将模型拟合到数据的简单有效的方法。我们通过显示它超越了以前用于分析流行病模型的进化计算方法来证明其功效。

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