CUED Publications database

Identification of Nonlinear State-Space Systems from Heterogeneous Datasets

Pan, W and Yuan, Y and Ljung, L and Goncalves, J and Stan, GB (2018) Identification of Nonlinear State-Space Systems from Heterogeneous Datasets. IEEE Transactions on Control of Network Systems, 5. pp. 737-747. ISSN 2325-5870

Full text not available from this repository.

Abstract

© 2014 IEEE. This paper proposes a new method to identify nonlinear state-space systems from heterogeneous datasets. The method is described in the context of identifying biochemical/gene networks (i.e., identifying both reaction dynamics and kinetic parameters) from experimental data. Simultaneous integration of various datasets has the potential to yield better performance for system identification. Data collected experimentally typically vary depending on the specific experimental setup and conditions. Typically, heterogeneous data are obtained experimentally through 1) replicate measurements from the same biological system or 2) application of different experimental conditions such as changes/perturbations in biological inductions, temperature, gene knock-out, gene over-expression, etc. We formulate here the identification problem using a Bayesian learning framework that makes use of 'sparse group' priors to allow inference of the sparsest model that can explain the whole set of observed heterogeneous data. To enable scale up to large number of features, the resulting nonconvex optimization problem is relaxed to a reweighted Group Lasso problem using a convex-concave procedure. As an illustrative example of the effectiveness of our method, we use it to identify a genetic oscillator (generalized eight species repressilator). Through this example we show that our algorithm outperforms Group Lasso when the number of experiments is increased, even when each single time-series dataset is short. We additionally assess the robustness of our algorithm against noise by varying the intensity of process noise and measurement noise.

Item Type: Article
Subjects: UNSPECIFIED
Divisions: Div F > Control
Depositing User: Cron Job
Date Deposited: 18 Sep 2017 20:05
Last Modified: 12 Dec 2019 01:43
DOI: 10.1109/TCNS.2017.2758966