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1
Intro
2
Mitigating climate change
3
The DER story
4
The technical challenges
5
Local energy markets: Pricing
6
Local energy markets: Performance
7
Local energy markets: Challenges
8
Flexible loads: Sources
9
Flexible loads: Challenges
10
Flexible loads: Program Setup
11
Flexible loads: Aggregations
12
Flexible loads: Assumption
13
Flexible loads: Current Approach
14
Flexible loads: Forecasting
15
Emissions reduction
16
Local energy markets: RL
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the role of data and machine learning in enabling flexible clean energy resources through this 51-minute presentation by Utkarsha Agwan from UC Berkeley. Delve into topics such as mitigating climate change, distributed energy resources (DER), local energy markets, flexible loads, and emissions reduction. Learn about the technical challenges, pricing mechanisms, and performance issues in local energy markets, as well as the sources, challenges, and program setup for flexible loads. Discover current approaches to load forecasting and the application of reinforcement learning in local energy markets. Gain insights into the interdisciplinary research being conducted by the DataLearning working group to develop new technologies based on data assimilation and machine learning for clean energy solutions.

The Role of Data and Machine Learning in Enabling Flexible Clean Energy Resources

DataLearning@ICL
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