sup3r
Synthetic data generator
Creates synthetic high-resolution spatiotemporal data for renewable energy resources using generative adversarial networks.
The Super-Resolution for Renewable Resource Data (sup3r) software uses generative adversarial networks to create synthetic high-resolution wind and solar spatiotemporal data from coarse low-resolution inputs.
88 stars
11 watching
10 forks
Language: Python
last commit: 11 months ago
Linked from 1 awesome list
climate-changeclimate-datadeep-learninggenerative-adversarial-networkmachine-learningrenewable-energysolar-energytensorflowwind-energy
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