In this paper a novel partition-based state prediction method is proposed for interconnected stochastic systems using sensor networks. Each sensor locally computes a prediction of the state of the monitored subsystem based on the knowledge of the local model and the communication with neighboring nodes of the sensor network. The prediction is performed in a distributed way, not requiring a centralized coordination or the knowledge of the global model. Weights and parameters of the state prediction are locally optimized in order to minimise at each time-step bias and variance of the prediction error by means of a multi-objective Pareto optimization framework. Individual correlations between the state, the measurements, and the noise componen...
In this study, we present methods of optimization-based power system state estimation over sensor ne...
This paper is concerned with the distributed filtering problem for a class of discrete time-varying ...
This paper addresses the problem of decentralized state estimation of distributed physical phenomena...
In this paper a novel partition-based state prediction method is proposed for interconnected stochas...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper, a distributed method for fault detection using sensor networks is proposed. Each sens...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
The research in distributed algorithms is linked with the developments of statistical inference in ...
A sensor network is a distributed system, consisting of plenty of embedded sensors that can be depl...
This paper investigates the problem of a scalable distributed state estimation for a class of discre...
In the last years, the distributed state estimation issue has gained great importance in the framewo...
This paper presents a method for the simultaneous state and parameter estimation of finite-dimension...
In this study, we present methods of optimization-based power system state estimation over sensor ne...
This paper is concerned with the distributed filtering problem for a class of discrete time-varying ...
This paper addresses the problem of decentralized state estimation of distributed physical phenomena...
In this paper a novel partition-based state prediction method is proposed for interconnected stochas...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper, a distributed method for fault detection using sensor networks is proposed. Each sens...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
The research in distributed algorithms is linked with the developments of statistical inference in ...
A sensor network is a distributed system, consisting of plenty of embedded sensors that can be depl...
This paper investigates the problem of a scalable distributed state estimation for a class of discre...
In the last years, the distributed state estimation issue has gained great importance in the framewo...
This paper presents a method for the simultaneous state and parameter estimation of finite-dimension...
In this study, we present methods of optimization-based power system state estimation over sensor ne...
This paper is concerned with the distributed filtering problem for a class of discrete time-varying ...
This paper addresses the problem of decentralized state estimation of distributed physical phenomena...