Litcius/Paper detail

Machine learning for power system stability and control

Rakibul Islam, Mir Araf Hossain Rivin, Sharmin Sultana, MD Amaddus Bepary Asif, Mahathir Mohammad, Md Mustafizur Rahaman

2025Results in Engineering30 citationsDOIOpen Access PDF

Abstract

Applying machine Learning (ML) techniques to power system control and stability has become a game-changing strategy for dealing with the increasing complexity of contemporary electrical grids. This review paper demonstrates how machine learning approaches can stabilize and manage three different power system types —voltage, small signal, and transient —for the integration of renewable energy sources. Data-driven methods and artificial neural networks can utilize sensors and actuator activities in conjunction with machine learning technologies that enable vector machines.ML ensures consistent power input and output in power systems, maximizing system restoration and safeguarding the entire system. Additionally, when the voltage source is autonomously controlled, ML technology simultaneously diagnoses and detects defects. Although obstacles are identified due to the lack of sophisticated monitoring, operation, and control, researchers are developing additional usage features, such as federated learning and physics-informed neural networks. Not all the data is available for testing, but researchers are currently working to obtain 99%.

Topics & Concepts

Stability (learning theory)Control (management)Computer sciencePower (physics)Artificial intelligenceControl engineeringMachine learningEngineeringPhysicsQuantum mechanicsPower System Optimization and StabilityEnergy Load and Power ForecastingSmart Grid Security and Resilience