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Future Smart Grids Control and Optimization: A Reinforcement Learning Tool for Optimal Operation Planning
by
Grillo, Samuele
, Storti Gajani, Giancarlo
, Rossi, Federico
, Gruosso, Giambattista
in
Algorithms
/ Artificial intelligence
/ Decision making
/ Learning
/ Linear programming
/ Management science
/ Methods
/ optimal power flow
/ Optimization
/ reinforcement learning
/ smart grid planning
/ Strategic planning
/ Systems stability
2025
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Future Smart Grids Control and Optimization: A Reinforcement Learning Tool for Optimal Operation Planning
by
Grillo, Samuele
, Storti Gajani, Giancarlo
, Rossi, Federico
, Gruosso, Giambattista
in
Algorithms
/ Artificial intelligence
/ Decision making
/ Learning
/ Linear programming
/ Management science
/ Methods
/ optimal power flow
/ Optimization
/ reinforcement learning
/ smart grid planning
/ Strategic planning
/ Systems stability
2025
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Do you wish to request the book?
Future Smart Grids Control and Optimization: A Reinforcement Learning Tool for Optimal Operation Planning
by
Grillo, Samuele
, Storti Gajani, Giancarlo
, Rossi, Federico
, Gruosso, Giambattista
in
Algorithms
/ Artificial intelligence
/ Decision making
/ Learning
/ Linear programming
/ Management science
/ Methods
/ optimal power flow
/ Optimization
/ reinforcement learning
/ smart grid planning
/ Strategic planning
/ Systems stability
2025
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Future Smart Grids Control and Optimization: A Reinforcement Learning Tool for Optimal Operation Planning
Journal Article
Future Smart Grids Control and Optimization: A Reinforcement Learning Tool for Optimal Operation Planning
2025
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Overview
The smart grids of the future present innovative opportunities for data exchange and real-time operations management. In this context, it is crucial to integrate technological advancements with innovative planning algorithms, particularly those based on artificial intelligence (AI). AI methods offer powerful tools for planning electrical systems, including electrical distribution networks. This study presents a methodology based on reinforcement learning (RL) for evaluating optimal power flow with respect to various cost functions. Additionally, it addresses the control of dynamic constraints, such as voltage fluctuations at network nodes. A key insight is the use of historical real-world data to train the model, enabling its application in real-time scenarios. The algorithms were validated through simulations conducted on the IEEE 118-bus system, which included five case studies. Real datasets were used for both training and testing to enhance the algorithm’s practical relevance. The developed tool is versatile and applicable to power networks of varying sizes and load characteristics. Furthermore, the potential of RL for real-time applications was assessed, demonstrating its adaptability to online grid operations. This research represents a significant advancement in leveraging machine learning to improve the efficiency and stability of modern electrical grids.
Publisher
MDPI AG
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