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Data-driven quantum approximate optimization algorithm for power systems
Hang Jing, Ye Wang,
Yan Li
Electrical Engineering
Research output
:
Contribution to journal
›
Article
›
peer-review
14
Scopus citations
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Dive into the research topics of 'Data-driven quantum approximate optimization algorithm for power systems'. Together they form a unique fingerprint.
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Keyphrases
Power System
100%
Quantum Approximate Optimization Algorithm
100%
Weighted Graph
33%
Energy Sustainability
16%
Expectation Values
16%
Data Delivery
16%
Computational Effort
16%
Algorithm Performance
16%
Parameter Optimization
16%
Dominant System
16%
Williamson
16%
Graph-based
16%
Power Delivery
16%
Monitoring Control
16%
Value Computation
16%
Computational Issues
16%
Monitoring Operation
16%
Noisy Intermediate-scale Quantum
16%
Quantum Resource
16%
Quantum Technologies
16%
Distributed Energy Resources
16%
Engineering
Power Engineering
100%
Computational Effort
33%
Data Delivery
33%
Energy Sustainability
33%
Distributed Energy Resource
33%