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It is assumed that the operator manages a wind turbine plugged into a battery, which either provides or stores energy on demand to avoid ramp-up and ramp-down events. The battery stages, namely charging, discharging, or neutral, are modeled as a semi-Markov process. During each charging\/discharging period, the energy stored\/supplied is assumed to follow a modified Brownian bridge that depends on three parameters. 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