qusaybtoush / Texas-Wind---Turbine---Accuracy-99-
Texas Wind - Turbine About Dataset Problem Statement: The intermittent nature and low control over the wind conditions bring up the same problem to every grid operator in their successful integration to satisfy current demand. In combination with having to predict demand and balance it with the supply, the grid operator now also must predict the…
☆8Updated 2 years ago
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