Application of Deep Learning Methods in Monitoring and Optimization of Electric Power Systems

09/01/2023
by   Ognjen Kundacina, et al.
0

This PhD thesis thoroughly examines the utilization of deep learning techniques as a means to advance the algorithms employed in the monitoring and optimization of electric power systems. The first major contribution of this thesis involves the application of graph neural networks to enhance power system state estimation. The second key aspect of this thesis focuses on utilizing reinforcement learning for dynamic distribution network reconfiguration. The effectiveness of the proposed methods is affirmed through extensive experimentation and simulations.

READ FULL TEXT
research
12/22/2020

Autonomous Charging of Electric Vehicle Fleets to Enhance Renewable Generation Dispatchability

A total 19 over some months, more than 10 a novel approach to reduce ren...
research
12/23/2022

Proximal Policy Optimization with Graph Neural Networks for Optimal Power Flow

Optimal Power Flow (OPF) is a very traditional research area within the ...
research
06/19/2023

Application of Deep Learning for Predictive Maintenance of Oilfield Equipment

This thesis explored applications of the new emerging techniques of arti...
research
06/19/2019

Predicting the Voltage Distribution for Low Voltage Networks using Deep Learning

The energy landscape for the Low-Voltage (LV) networks are beginning to ...
research
06/05/2019

Machine Learning and System Identification for Estimation in Physical Systems

In this thesis, we draw inspiration from both classical system identific...
research
11/22/2020

Spatio-Temporal Visualization of Interdependent Battery Bus Transit and Power Distribution Systems

The high penetration of transportation electrification and its associate...
research
06/05/2018

New Hybrid Neuro-Evolutionary Algorithms for Renewable Energy and Facilities Management Problems

This Ph.D. thesis deals with the optimization of several renewable energ...

Please sign up or login with your details

Forgot password? Click here to reset