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Deep Reinforcement Learning for Resilient Power and Energy Systems: Progress, Prospects, and Future Avenues
by
Gautam, Mukesh
in
Alternative energy sources
/ communications and cybersecurity
/ Costs
/ Decision making
/ Deep learning
/ deep reinforcement learning
/ dynamic response
/ Efficiency
/ Energy management
/ energy management and control
/ Energy resources
/ ENGINEERING
/ Heuristic
/ Mathematical programming
/ Optimization techniques
/ power and energy system resilience
/ POWER TRANSMISSION AND DISTRIBUTION
/ Renewable resources
/ resilience review
2023
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Deep Reinforcement Learning for Resilient Power and Energy Systems: Progress, Prospects, and Future Avenues
by
Gautam, Mukesh
in
Alternative energy sources
/ communications and cybersecurity
/ Costs
/ Decision making
/ Deep learning
/ deep reinforcement learning
/ dynamic response
/ Efficiency
/ Energy management
/ energy management and control
/ Energy resources
/ ENGINEERING
/ Heuristic
/ Mathematical programming
/ Optimization techniques
/ power and energy system resilience
/ POWER TRANSMISSION AND DISTRIBUTION
/ Renewable resources
/ resilience review
2023
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Do you wish to request the book?
Deep Reinforcement Learning for Resilient Power and Energy Systems: Progress, Prospects, and Future Avenues
by
Gautam, Mukesh
in
Alternative energy sources
/ communications and cybersecurity
/ Costs
/ Decision making
/ Deep learning
/ deep reinforcement learning
/ dynamic response
/ Efficiency
/ Energy management
/ energy management and control
/ Energy resources
/ ENGINEERING
/ Heuristic
/ Mathematical programming
/ Optimization techniques
/ power and energy system resilience
/ POWER TRANSMISSION AND DISTRIBUTION
/ Renewable resources
/ resilience review
2023
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Deep Reinforcement Learning for Resilient Power and Energy Systems: Progress, Prospects, and Future Avenues
Journal Article
Deep Reinforcement Learning for Resilient Power and Energy Systems: Progress, Prospects, and Future Avenues
2023
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Overview
In recent years, deep reinforcement learning (DRL) has garnered substantial attention in the context of enhancing resilience in power and energy systems. Resilience, characterized by the ability to withstand, absorb, and quickly recover from natural disasters and human-induced disruptions, has become paramount in ensuring the stability and dependability of critical infrastructure. This comprehensive review delves into the latest advancements and applications of DRL in enhancing the resilience of power and energy systems, highlighting significant contributions and key insights. The exploration commences with a concise elucidation of the fundamental principles of DRL, highlighting the intricate interplay among reinforcement learning (RL), deep learning, and the emergence of DRL. Furthermore, it categorizes and describes various DRL algorithms, laying a robust foundation for comprehending the applicability of DRL. The linkage between DRL and power system resilience is forged through a systematic classification of DRL applications into five pivotal dimensions: dynamic response, recovery and restoration, energy management and control, communications and cybersecurity, and resilience planning and metrics development. This structured categorization facilitates a methodical exploration of how DRL methodologies can effectively tackle critical challenges within the domain of power and energy system resilience. The review meticulously examines the inherent challenges and limitations entailed in integrating DRL into power and energy system resilience, shedding light on practical challenges and potential pitfalls. Additionally, it offers insights into promising avenues for future research, with the aim of inspiring innovative solutions and further progress in this vital domain.
Publisher
MDPI AG,MDPI
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