Ensemble Methods of Classification for Power Systems Security Assessment

January 07, 2016 Β· Declared Dead Β· πŸ› Applied Computing and Informatics

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Authors Alexei Zhukov, Victor Kurbatsky, Nikita Tomin, Denis Sidorov, Daniil Panasetsky, Aoife Foley arXiv ID 1601.01675 Category cs.AI: Artificial Intelligence Cross-listed cs.LG Citations 42 Venue Applied Computing and Informatics Last Checked 4 months ago
Abstract
One of the most promising approaches for complex technical systems analysis employs ensemble methods of classification. Ensemble methods enable to build a reliable decision rules for feature space classification in the presence of many possible states of the system. In this paper, novel techniques based on decision trees are used for evaluation of the reliability of the regime of electric power systems. We proposed hybrid approach based on random forests models and boosting models. Such techniques can be applied to predict the interaction of increasing renewable power, storage devices and swiching of smart loads from intelligent domestic appliances, heaters and air-conditioning units and electric vehicles with grid for enhanced decision making. The ensemble classification methods were tested on the modified 118-bus IEEE power system showing that proposed technique can be employed to examine whether the power system is secured under steady-state operating conditions.
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