论文标题
具有部分激发和测量的线性动态网络中的单个模块可识别性
Single module identifiability in linear dynamic networks with partial excitation and measurement
论文作者
论文摘要
传输函数网络中单个模块的可识别性取决于网络中的特定传输函数是否可以根据数据在网络模型集中唯一区分。尽管以前的研究集中在所有网络信号都被激发或测量的情况下,但我们为部分测量和部分激发的情况开发了广义分析结果。由于可识别性条件通常需要足够数量的外部激发信号,因此这项工作引入了一种新型的网络模型结构,因此包括来自未衡量的噪声信号的激发,这与仅依赖于测量的激发信号相比,这会导致保守的可识别性条件。更重要的是,开发图形条件是为了基于动态网络的拓扑来验证单个模块的全局和通用性可识别性。取决于可以测量模块的输入还是输出,我们提供四个可识别性条件,这些条件涵盖了单个模块标识中所有可能的情况。这些条件进一步导致了分配激发信号和选择测量信号的合成方法,以保证单个模块可识别性。另外,如果满足可识别性条件,则开发了间接识别方法以提供模块的一致估计。所有获得的结果也扩展到网络中多个模块的可识别性。
Identifiability of a single module in a network of transfer functions is determined by whether a particular transfer function in the network can be uniquely distinguished within a network model set, on the basis of data. Whereas previous research has focused on the situations that all network signals are either excited or measured, we develop generalized analysis results for the situation of partial measurement and partial excitation. As identifiability conditions typically require a sufficient number of external excitation signals, this work introduces a novel network model structure such that excitation from unmeasured noise signals is included, which leads to less conservative identifiability conditions than relying on measured excitation signals only. More importantly, graphical conditions are developed to verify global and generic identifiability of a single module based on the topology of the dynamic network. Depending on whether the input or the output of the module can be measured, we present four identifiability conditions which cover all possible situations in single module identification. These conditions further lead to synthesis approaches for allocating excitation signals and selecting measured signals, to warrant single module identifiability. In addition, if the identifiability conditions are satisfied, indirect identification methods are developed to provide a consistent estimate of the module. All the obtained results are also extended to identifiability of multiple modules in the network.