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Hybrid modeling and prediction of dynamical systems

机译:动力系统的混合建模和预测

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摘要

Scientific analysis often relies on the ability to make accurate predictions of a system’s dynamics. Mechanistic models, parameterized by a number of unknown parameters, are often used for this purpose. Accurate estimation of the model state and parameters prior to prediction is necessary, but may be complicated by issues such as noisy data and uncertainty in parameters and initial conditions. At the other end of the spectrum exist nonparametric methods, which rely solely on data to build their predictions. While these nonparametric methods do not require a model of the system, their performance is strongly influenced by the amount and noisiness of the data. In this article, we consider a hybrid approach to modeling and prediction which merges recent advancements in nonparametric analysis with standard parametric methods. The general idea is to replace a subset of a mechanistic model’s equations with their corresponding nonparametric representations, resulting in a hybrid modeling and prediction scheme. Overall, we find that this hybrid approach allows for more robust parameter estimation and improved short-term prediction in situations where there is a large uncertainty in model parameters. We demonstrate these advantages in the classical Lorenz-63 chaotic system and in networks of Hindmarsh-Rose neurons before application to experimentally collected structured population data.
机译:科学分析通常依赖于对系统动态进行准确预测的能力。为此,通常使用由许多未知参数设置参数的机械模型。在预测之前必须对模型状态和参数进行准确的估计,但是可能会由于诸如噪声数据以及参数和初始条件的不确定性之类的问题而变得复杂。在频谱的另一端,存在非参数方法,这些方法仅依靠数据来建立其预测。尽管这些非参数方法不需要系统模型,但其性能受数据量和数据噪声的强烈影响。在本文中,我们考虑了一种用于建模和预测的混合方法,该方法将非参数分析的最新进展与标准参数方法相结合。总体思路是将机械模型方程的子集替换为其相应的非参数表示形式,从而形成混合建模和预测方案。总体而言,我们发现在模型参数存在较大不确定性的情况下,这种混合方法可实现更可靠的参数估计和改进的短期预测。我们证明了在经典的Lorenz-63混沌系统和Hindmarsh-Rose神经元网络中的这些优势,然后再应用于通过实验收集的结构化人口数据。

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