This work is concerned with the design of a two-step distributed state estimation scheme for large-scale systems in the presence of unknown-but-bounded disturbances and noise. The set-membership approach is employed to construct a compact set containing the states consistent with system measurements and bounded noise and disturbances. The tightened feasible region is then provided to a moving horizon estimator that determines the optimal state estimates. Partitioning of the overall problem and coordination of the resulting subproblems are achieved using decomposition of the optimality conditions and community detection. The proposed strategy is tested on a case study based on a reactor–separator system widely used in the literature. Its per...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...
This work is concerned with the design of a two-step distributed state estimation scheme for large-s...
In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is pro...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents three novel Moving Horizon Estimation (MHE) methods for discrete-time partitione...
In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is pro...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
A distributed set-membership approach is proposed for the state estimation of large-scale systems. T...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...
This work is concerned with the design of a two-step distributed state estimation scheme for large-s...
In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is pro...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents three novel Moving Horizon Estimation (MHE) methods for discrete-time partitione...
In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is pro...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
A distributed set-membership approach is proposed for the state estimation of large-scale systems. T...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...