How does AI contribute to renewable energy optimization?
Answer Posted / Ravish Babu Bharti
AI contributes to renewable energy optimization by predicting energy demand, optimizing the operation of renewable energy sources, and reducing downtime. For example, AI can forecast solar irradiance levels or wind speeds to maximize the output of photovoltaic panels or wind turbines.
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