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Prediction error identification of linear dynamic networks with rank-reduced noise

机译:降低噪声线性动态网络的预测误差识别

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摘要

Dynamic networks are interconnected dynamic systems with measured node signals and dynamic modules reflecting the links between the nodes. We address the problem of identifying a dynamic network with known topology, on the basis of measured signals, for the situation of additive process noise on the node signals that is spatially correlated and that is allowed to have a spectral density that is singular. A prediction error approach is followed in which all node signals in the network are jointly predicted. The resulting joint-direct identification method, generalizes the classical direct method for closed-loop identification to handle situations of mutually correlated noise on inputs and outputs. When applied to general dynamic networks with rank-reduced noise, it appears that the natural identification criterion becomes a weighted LS criterion that is subject to a constraint. This constrained criterion is shown to lead to maximum likelihood estimates of the dynamic network and therefore to minimum variance properties, reaching the Cramer-Rao lower bound in the case of Gaussian noise. In order to reduce technical complexity, the analysis is restricted to dynamic networks with strictly proper modules. (C) 2018 Elsevier Ltd. All rights reserved.
机译:动态网络是具有测量节点信号的互连动态系统和反映节点之间的链路的动态模块。我们通过在空间相关的节点信号上的添加过程噪声的情况下,解决了用已知拓扑的识别具有已知拓扑的动态网络的问题。遵循预测误差方法,其中网络中的所有节点信号都是共同预测的。由此产生的联合直接识别方法概括了闭环识别的经典直接方法,以处理对输入和输出相互相关噪声的情况。当应用于具有秩降低噪声的通用动态网络时,看起来自然识别标准成为受约束的加权LS标准。该约束标准被示出为导致动态网络的最大似然估计,因此对最小方差性质,在高斯噪声的情况下达到克拉梅-RAO下限。为了降低技术复杂性,分析仅限于严格正确的模块的动态网络。 (c)2018年elestvier有限公司保留所有权利。

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