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Module 4 - AI in Energy Management

Abstract graphic featuring colorful circuit lines and nodesAbstract graphic featuring colorful circuit lines and nodes

1. Why does decentralisation increase energy system complexity?(Required)
2. A grid operator faces sudden drops in wind production. What is the BEST use of AI?(Required)
3. Why is demand forecasting critical for energy management?(Required)
4. Which combination of data would MOST improve renewable energy forecasting?(Required)
5. In a smart grid, what is the main advantage of real-time AI decision-making?(Required)
6. A city has high evening electricity demand and solar production during the day. What is the BEST AI-supported strategy?(Required)
7. Why is predictive maintenance more efficient than traditional maintenance?(Required)
8. How does AI contribute to integrating more renewable energy into the grid?(Required)
9. What is a key trade-off highlighted in “Green AI”?(Required)
10. In a Vehicle-to-Grid (V2G) system, what is the main benefit of AI?(Required)
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