Repository logo
Acerca de Depósito
  • Español
  • English
Log In
  1. Home
  2. Productividad Cientifica
  3. Artículos
  4. Artificial intelligence techniques for dynamic security assessments - a survey
 
  • Details

Artificial intelligence techniques for dynamic security assessments - a survey

Journal
Artificial Intelligence Review
Date Issued
2024-12-01
Author(s)
Cuevas, Miguel
Alvarez Malebran, Ricardo Javier  
Departamento de Ingeniería Eléctrica  
Rahmann, Claudia
Ortiz, Diego
Peña, José
Rozas Valderrama, Rodrigo  
Departamento de Ingeniería Eléctrica  
DOI
10.1007/s10462-024-10993-y
Abstract
The increasing uptake of converter-interfaced generation (CIG) is changing power system dynamics, rendering them extremely dependent on fast and complex control systems.
Regularly assessing the stability of these systems across a wide range of operating conditions is thus a critical task for ensuring secure operation. However, the simultaneous
simulation of both fast and slow (electromechanical) phenomena, along with an increased
number of critical operating conditions, pushes traditional dynamic security assessments
(DSA) to their limits. While DSA has served its purpose well, it will not be tenable in
future electricity systems with thousands of power electronic devices at different voltage
levels on the grid. Therefore, reducing both human and computational efforts required
for stability studies is more critical than ever. In response to these challenges, several
advanced simulation techniques leveraging artificial intelligence (AI) have been proposed
in recent years. AI techniques can handle the increased uncertainty and complexity of
power systems by capturing the non-linear relationships between the system’s operational
conditions and their stability without solving the set of algebraic-differential equations
that model the system. Once these relationships are established, system stability can be
promptly and accurately evaluated for a wide range of scenarios. While hundreds of research articles confirm that AI techniques are paving the way for fast stability assessments,
many questions and issues must still be addressed, especially regarding the pertinence of
studying specific types of stability with the existing AI-based methods and their application in real-world scenarios. In this context, this article presents a comprehensive review
of AI-based techniques for stability assessments in power systems. Different AI technical
implementations, such as learning algorithms and the generation and treatment of input
data, are widely discussed and contextualized. Their practical applications, considering
the type of stability, system under study, and type of applications, are also addressed. We
review the ongoing research efforts and the AI-based techniques put forward thus far for
DSA, contextualizing and interrelating them. We also discuss the advantages, limitations,
challenges, and future trends of AI techniques for stability studies.
Subjects

Artificial intelligen...

Deep learning

Dynamic security asse...

Machine learning

Power system stabilit...

File(s)
Loading...
Thumbnail Image
Name

s10462-024-10993-y.pdf

Size

2.79 MB

Format

Adobe PDF

Checksum

(MD5):abdc6eab12b3d6faa79646d3c09ecbb5

UNIVERSIDAD

  • Nuestra Historia
  • Federico Santa María
  • Definiciones Estratégicas
  • Modelo Educativo
  • Organización
  • Información Estadística USM

CAMPUS Y SEDES

  • Información Campus y Sedes
  • Tour Virtual

EXTENSIÓN Y CULTURA

  • Dirección General de Comunicaciones
  • Dirección General de Vinculación con el Medio
  • Oficina de Asuntos Internacionales
  • Red de Ex-Alumnos
  • Noticias USM
  • Eventos USM
  • Radio USM
  • Cultura USM

SERVICIOS

  • Aula USM
  • Biblioteca USM
  • Portal de Autoservicio Institucional
  • Dirección de Tecnologías de la Información
  • Portal de Reportes UDAI
  • Sistema de Información de Gestión Académica
  • Sistema Integrado de Información Argos ERP
  • Sistema de Remuneraciones Históricas
  • Directorio USM
  • Trabaja con nosotros
Acreditación USM
usm.cl
Logo Acceso
Logo Consejo de Rectores
Logo G9
Logo AUR
Logo CRUV
Logo REUNA
Logo Universia

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science

  • Cookie settings
  • Privacy policy
  • End User Agreement
  • Send Feedback