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Publications by Hyoungtae Kim
Fault Current Constraint Transmission Expansion Planning Based on the Inverse Matrix Modification Lemma and a Valid Inequality
Energies
Control
Electronic Engineering
Energy Engineering
Renewable Energy
Energy
Fuel Technology
Sustainability
Optimization
Electrical
Power Technology
the Environment
Related publications
Transmission Expansion Planning Based on a Hybrid Genetic Algorithm Approach Under Uncertainty
Turkish Journal of Electrical Engineering and Computer Sciences
Electronic Engineering
Electrical
Computer Science
Development of Generation-Transmission Expansion Planning Method Based on a Hierarchical Model
IEEJ Transactions on Power and Energy
Electronic Engineering
Power Technology
Electrical
Energy Engineering
On a Modification of Watson's Lemma
Journal of Research of the National Bureau of Standards Section B Mathematics and Mathematical Physics
Research on Transmission Network Expansion Planning Considering Splitting Control
Sustainability
Development
Management
Monitoring
Environmental Science
Renewable Energy
Energy Engineering
Law
Sustainability
Planning
Policy
Power Technology
the Environment
Geography
A Review on Generation and Transmission Expansion Co-Planning Models Under a Market Environment
IET Generation, Transmission and Distribution
Control
Systems Engineering
Electronic Engineering
Energy Engineering
Electrical
Power Technology
Production Network Planning Based on Constraint Relaxation and Discount Approach
Lecture Notes on Information Theory
Fault Location Algorithm for HVDC Transmission Based on Synchronized Fault Time
IJITEE (International Journal of Information Technology and Electrical Engineering)
Transmission System Expansion Planning for Indian States: A Proactive and Realistic Approach
IOSR Journal of Electrical and Electronics Engineering
Encoding Domain Transitions for Constraint-Based Planning
Journal of Artificial Intelligence Research
Artificial Intelligence