SYSYMar 25, 2019

Local module identification in dynamic networks with correlated noise: the full input case

arXiv:1809.0750215 citationsh-index: 42
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It addresses a known limitation in network identification for control engineers, enabling consistent module estimation under correlated disturbances.

This paper extends local module identification in dynamic networks to handle correlated process noises across nodes, proposing an algorithm that selects appropriate predictor inputs and outputs in MISO or MIMO setups to achieve consistent estimates with maximum likelihood properties.

The identification of local modules in dynamic networks with known topology has recently been addressed by formulating conditions for arriving at consistent estimates of the module dynamics, typically under the assumption of having disturbances that are uncorrelated over the different nodes. The conditions typically reflect the selection of a set of node signals that are taken as predictor inputs in a MISO identification setup. In this paper an extension is made to arrive at an identification setup for the situation that process noises on the different node signals can be correlated with each other. In this situation the local module may need to be embedded in a MIMO identification setup for arriving at a consistent estimate with maximum likelihood properties. This requires the proper treatment of confounding variables. The result is an algorithm that, based on the given network topology and disturbance correlation structure, selects an appropriate set of node signals as predictor inputs and outputs in a MISO or MIMO identification setup. As a first step in the analysis, we restrict attention to the (slightly conservative) situation where the selected output node signals are predicted based on all of their in-neighbor node signals in the network.

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