Optimizing Clean Energy with AI: A New Grid Approach
CHINASun Dec 29 2024
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Trying to schedule clean energy in a world where wind and sun don't always cooperate. That's what makes this job so tough! Traditional methods are struggling to handle the complex and ever-changing nature of clean energy sources. So, what's the solution? Enter the Environmental, Social, and Governance (ESG) big data platform, packed with computational power and loads of data. By combining this with Particle Swarm Optimization (PSO) and Deep Q-Network (DQN), we can make grid scheduling a breeze!
PSO is like a little helper that starts off by making an initial scheduling plan. But it's not enough to just do that once; we need something that updates in real-time. That's where DQN comes in! It tweaks the PSO plan based on the latest data, so our schedule can adapt to sudden changes in demand and renewable energy output.
But how do we know this actually works? The team ran some simulations using real data from the State Grid ESG platform. Guess what? Clean energy utilization shot up from 62. 4% to a whopping 87. 7%, and scheduling costs dropped by a impressive 22%. Even with some communication delays, the method showed its worth by staying adaptable and stable in different conditions.
This new approach is like a fresh breath of air for clean energy scheduling, offering a robust way to improve utilization and cut costs. It's not just about today; this method can pave the way for more research and development in the field.
https://localnews.ai/article/optimizing-clean-energy-with-ai-a-new-grid-approach-e5e8d140
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