An Analysis of Energy Consumption in Small- and Medium-Sized Buildings
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Keywords
electrical energy management; energy system; renewable energy sources; reduction in electrical energy consumption; low-cost electrical power systems; energy strategy; energy efficiency; strategic management; analysis of methods of energy management; electrical energy consumption; limitation of probabilistic method; integrated approach; transformation; European Green Deal;All these keywords.
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