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Publicações

Publicações por Helena Vasconcelos

2006

ANN design for fast security evaluation of interconnected systems with large wind power production

Autores
Vasconcelos, H; Lopes, JAP;

Publicação
2006 International Conference on Probabilistic Methods Applied to Power Systems, Vols 1 and 2

Abstract
This paper presents the performed steps to design an Artificial Neural Network (ANN) tool, able to evaluate, within the framework of on-line security assessment, the dynamic security of interconnected power systems having an increased penetration of wind power production. This approach exploits functional knowledge generated off-line, the Linear Regression (LR) variable selection stepwise method to perform automatic Feature Subset Selection (FSS) and ANN to provide a way for fast evaluation of the system security degree. In order to choose the best input/output set of variables for the ANN tool, a comparative analysis is performed, regarding the obtained predicting error, by performing a statistical hypothesis test. The reduced error results confirm the feasibility and quality of the derived security structures.

1999

On-line dynamic security assessment of isolated networks integrating large wind power production

Autores
Pecas Lopes, JA; Hatziargyriou, N; Vasconcelos, M; Karapidakis, E; Fidalgo, J;

Publicação
Wind Engineering

Abstract
The paper describes the on-line dynamic security assessment functions developed within the European Union, DGXII programme, CARE. These functions are based exclusively on the application of machine learning techniques. A description of the problem and the data set generation procedure for the Crete island power system are included. Comparative results regarding performances of Decision Trees, Kernel Regression Trees and Neural Networks are presented and discussed.The paper describes the on-line dynamic security assessment functions developed within the European Union, DGXII programme, CARE. These functions are based exclusively on the application of machine learning techniques. A description of the problem and the data set generation procedure for the Crete island power system are included. Comparative results regarding performances of Decision Trees, Kernel Regression Trees and Neural Networks are presented and discussed.

2001

Preliminary results from the MORE advanced control advice project for secure operation of isolated power systems with increased renewable energy penetration and storage

Autores
Hatziargyriou, N; Contaxis, G; Matos, M; Pecas Lopes, JA; Vasconcelos, MH; Kariniotakis, G; Mayer, D; Halliday, J; Dutton, G; Dokopoulos, P; Bakirtzis, A; Stefanakis, J; Gigantidou, A; O'Donnell, P; McCoy, D; Fernandes, MJ; Cotrim, JMS; Figueira, AP;

Publicação
2001 IEEE Porto Power Tech Proceedings

Abstract
In this paper, preliminary results from MORE CARE, a European R&D project financed within the Energy Program are described. This project has as main objective the development of an advanced control software system, aiming to optimize the overall performance of isolated and weakly interconnected systems in liberalized market environments by increasing the share of wind energy and other renewable forms, including advanced on-line security functions. The main features of the control system comprise advanced software modules for load and wind power forecasting, unit commitment and economic dispatch of the conventional and renewable units and on-line security assessment capabilities integrated in a friendly Man-Machine environment. Pilot installations of advanced control functions are foreseen on the islands of Crete, Ireland and Madeira. © 2001 IEEE.

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