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Parameter estimation in continuous-time dynamic models using principal differential analysis

机译:基于主差分分析的连续时间动态模型参数估计

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摘要

Principal differential analysis (PDA) is an alternative parameter estimation technique for differential equation models in which basis functions (e.g.,B-splines) are fitted to dynamic data.Derivatives of the resulting empirical expressions are used to avoid solving differential equations when estimating parameters.Benefits and shortcomings of PDA were examined using a simple continuous stirred-tank reactor (CSTR) model.Although PDA required considerably less computational effort than traditional nonlinear regression,parameter estimates from PDA were less precise.Sparse and noisy data resulted in poor spline fits and misleading derivative information,leading to poor parameter estimates.These problems are addressed by a new iterative algorithm (iPDA) in which the spline fits are improved using model-based penalties.Parameter estimates from iPDA were unbiased and more precise than those from standard PDA.Issues that need to be resolved before iPDA can be used for more complex models are discussed.
机译:主微分分析(PDA)是微分方程模型的一种可选参数估计技术,其中将基础函数(例如B样条)拟合到动态数据中。所得经验表达式的导数用于在估计参数时避免求解微分方程。使用简单的连续搅拌釜反应器(CSTR)模型检查了PDA的优缺点。虽然PDA所需的计算量比传统的非线性回归要少得多,但PDA的参数估计值精度较差。稀疏且嘈杂的数据导致花键拟合和拟合较差。新的迭代算法(iPDA)解决了这些问题,其中新的迭代算法(iPDA)使用基于模型的惩罚改进了样条拟合.iPDA的参数估计比标准PDA的参数估计无偏且更精确。在将iPDA用于更复杂的模型之前,需要解决的问题是讨价还价。

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