This paper studies the local identification of large-scale homogeneous systems<br/>with general network topologies. The considered local system identification problem involves unmeasurable signals between neighboring subsystems. Compared with our previous work in Yu et al. (2014) which solves the local identification of 1D homogeneous systems, the main challenge of this work is how to deal with the general network topology. To overcome this problem, we first decompose the interested local system into separate subsystems using some state, input and output transform, namely the spatially lifted local system has block diagonal system matrices.We subsequently estimate the Markov parameters of the local system by solving a nuclear norm regulariz...
This work considers the problem of obtaining optimal estimates via distributed computation in a larg...
Recently different identification methods have been developed for identifying a single module in a d...
The problem of identifying a model of a system from input/output observations is typically formulate...
This paper studies the local identification of large-scale homogeneous systemswith general network t...
This paper studies the local subspace identification of 1D homogeneous networked systems. The main c...
This note studies the identification of a network comprised of interconnected clusters of LTI system...
Abstract:This note studies the identification of individual systems operating in a large-scale distr...
Abstract — As distributed systems increase in size, the need for scalable algorithms becomes more an...
This paper studies the problem of identification for networked systems. We consider both heterogeneo...
In this thesis, three novel state-space identification algorithms for linear interconnected systems ...
In this work, we explore the state-space formulation of network processes to recover the underlying ...
Abstract: This article presents an identification technique for distributed systems with identical u...
This paper deals with the problem of reconstructing the graph structure of a dynamical network using...
In this article, we explore the state-space formulation of a network process to recover from partial...
AbstractThe identification problems, i.e., the problems of finding unknown parameters in distributed...
This work considers the problem of obtaining optimal estimates via distributed computation in a larg...
Recently different identification methods have been developed for identifying a single module in a d...
The problem of identifying a model of a system from input/output observations is typically formulate...
This paper studies the local identification of large-scale homogeneous systemswith general network t...
This paper studies the local subspace identification of 1D homogeneous networked systems. The main c...
This note studies the identification of a network comprised of interconnected clusters of LTI system...
Abstract:This note studies the identification of individual systems operating in a large-scale distr...
Abstract — As distributed systems increase in size, the need for scalable algorithms becomes more an...
This paper studies the problem of identification for networked systems. We consider both heterogeneo...
In this thesis, three novel state-space identification algorithms for linear interconnected systems ...
In this work, we explore the state-space formulation of network processes to recover the underlying ...
Abstract: This article presents an identification technique for distributed systems with identical u...
This paper deals with the problem of reconstructing the graph structure of a dynamical network using...
In this article, we explore the state-space formulation of a network process to recover from partial...
AbstractThe identification problems, i.e., the problems of finding unknown parameters in distributed...
This work considers the problem of obtaining optimal estimates via distributed computation in a larg...
Recently different identification methods have been developed for identifying a single module in a d...
The problem of identifying a model of a system from input/output observations is typically formulate...