**Commenced**in January 2007

**Frequency:**Monthly

**Edition:**International

**Paper Count:**31435

##### A Review on Applications of Evolutionary Algorithms to Reservoir Operation for Hydropower Production

**Authors:**
Nkechi Neboh,
Josiah Adeyemo,
Abimbola Enitan,
Oludayo Olugbara

**Abstract:**

**Keywords:**
Evolutionary algorithms,
genetic algorithm,
hydropower,
multi-objective,
reservoir operations.

**Digital Object Identifier (DOI):**
doi.org/10.5281/zenodo.1109762

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