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Hydro Energy in Style : HydEA





 To enhance the effectiveness of existing hydropower plants, methods to carry out the exploitation of existing plants in a more effective way were explored in various parts of the World.

HydEA (Hydro Efficiency Analysis) project was inserted in this context, to increase the overall efficiency of hydroelectric plants through the more rational use of the resources was obtained by data-driven approaches.

This framework allows the real-time detection of deviations from the expected values. 

"It is also possible to recognize, through the recalculation of the models at fixed intervals, very slow decay of the system performance". 

@EnergyinStyle

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