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Identification of dynamic models in complex networks with prediction error methods-Basic methods for consistent module estimates

机译:使用预测误差方法识别复杂网络中的动态模型-一致性模块估计的基本方法

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摘要

The problem of identifying dynamical models on the basis of measurement data is usually considered in a classical open-loop or closed-loop setting. In this paper, this problem is generalized to dynamical systems that operate in a complex interconnection structure and the objective is to consistently identify the dynamics of a particular module in the network. For a known interconnection structure it is shown that the classical prediction error methods for closed-loop identification can be generalized to provide consistent model estimates, under specified experimental circumstances. Two classes of methods considered in this paper are the direct method and the joint-IO method that rely on consistent noise models, and indirect methods that rely on external excitation signals like two-stage and IV methods. Graph theoretical tools are presented to verify the topological conditions under which the several methods lead to consistent module estimates.
机译:通常在经典的开环或闭环设置中考虑基于测量数据识别动力学模型的问题。本文将这个问题推广到以复杂的互连结构运行的动态系统,目的是一致地识别网络中特定模块的动态。对于已知的互连结构,表明在指定的实验环境下,可以推广用于闭环识别的经典预测误差方法,以提供一致的模型估计。本文考虑的两类方法是直接方法和联合IO方法,它们依赖于一致的噪声模型;间接方法则依赖于外部激励信号,如两阶段和IV方法。提供了图论工具来验证拓扑条件,在此条件下,几种方法可以得出一致的模块估计值。

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