Hybrid renewable energy systems, load and generation forecasting, new grids structure, and smart technologies
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Nikita Tomin | Aliona Dreglea | Ulf Hager | Aoife Foley | Denis Sidorov | A. Foley | D. Sidorov | N. Tomin | A. Dreglea | Ulf Hager
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