Computational tools for rigorously verifying the performance of large-sc...
Machine learning algorithms, especially Neural Networks (NNs), are a val...
A significant increase in renewable energy production is necessary to ac...
The dynamics of the power system are described by a system of
differenti...
The simulation of power system dynamics poses a computationally expensiv...
Volt/VAR control rules facilitate the autonomous operation of distribute...
Machine learning (ML) algorithms are remarkably good at approximating co...
Given their intermittency, distributed energy resources (DERs) have been...
Machine learning can generate black-box surrogate models which are both
...
Gas network planning optimization under emission constraints prioritizes...
Deep decarbonization of the energy sector will require massive penetrati...
Nonlinear power flow constraints render a variety of power system
optimi...
This paper introduces, for the first time to our knowledge, physics-info...
Physics-informed neural networks exploit the existing models of the
unde...
Solving the ordinary differential equations that govern the power system...
With the rapid growth of renewable energy, lots of small photovoltaic (P...
Recent advances in deep learning have set the focus on neural networks (...
This paper introduces for the first time a framework to obtain provable
...
Varying power-infeed from converter-based generation units introduces gr...
This paper introduces a framework to capture previously intractable
opti...
This paper introduces for the first time, to our knowledge, a framework ...
This paper presents for the first time, to our knowledge, a framework fo...