The existence of multiple load-solution mappings of non-convex AC-OPF problems poses a fundamental challenge to deep neural network (DNN) schemes. As the training dataset may contain a mixture of data points corresponding to different load-solution mappings, the DNN can fail to learn a legitimate mapping and generate inferior solutions. We propose DeepOPF-AL as an augmented-learning approach to tackle this issue. The idea is to train a DNN to learn a unique mapping from an augmented input, i.e., (load, initial point), to the solution generated by an iterative OPF solver with the load and initial point as intake. We then apply the learned augmented mapping to solve AC-OPF problems much faster than conventional solvers. Simulation results ove...
Feed-forward, fully-connected Artificial Neural Networks (ANNs) or the so-called Multi-Layer Percept...
Deep Neural Networks (DNNs) have been shaking the AI scene, for their ability to excel at Machine Le...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
The traditional machine learning models to solve optimal power flow (OPF) are mostly trained for a g...
Deep learning approaches for the Alternating Current-Optimal Power Flow (AC-OPF) problem are under a...
High percentage penetrations of renewable energy generations introduce significant uncertainty into ...
The AC-OPF problem is the key and challenging problem in the power system operation. When solving th...
Current physics-informed (standard or operator) neural networks still rely on accurately learning th...
AC optimal power flow (AC-OPF) problems need to be solved more frequently in the future to maintain ...
The Kolmogorov $n$-width of the solution manifolds of transport-dominated problems can decay slowly....
Recently there has been a surge of interest in adopting deep neural networks (DNNs) for solving the ...
Analog mixed-signal (AMS) devices promise faster, more energy-efficient deep neural network (DNN) in...
Traditional numerical schemes for simulating fluid flow and transport in porous media can be computa...
Deep Learning has emerged as one of the most successful fields of machine learning and artificial in...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
Feed-forward, fully-connected Artificial Neural Networks (ANNs) or the so-called Multi-Layer Percept...
Deep Neural Networks (DNNs) have been shaking the AI scene, for their ability to excel at Machine Le...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
The traditional machine learning models to solve optimal power flow (OPF) are mostly trained for a g...
Deep learning approaches for the Alternating Current-Optimal Power Flow (AC-OPF) problem are under a...
High percentage penetrations of renewable energy generations introduce significant uncertainty into ...
The AC-OPF problem is the key and challenging problem in the power system operation. When solving th...
Current physics-informed (standard or operator) neural networks still rely on accurately learning th...
AC optimal power flow (AC-OPF) problems need to be solved more frequently in the future to maintain ...
The Kolmogorov $n$-width of the solution manifolds of transport-dominated problems can decay slowly....
Recently there has been a surge of interest in adopting deep neural networks (DNNs) for solving the ...
Analog mixed-signal (AMS) devices promise faster, more energy-efficient deep neural network (DNN) in...
Traditional numerical schemes for simulating fluid flow and transport in porous media can be computa...
Deep Learning has emerged as one of the most successful fields of machine learning and artificial in...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
Feed-forward, fully-connected Artificial Neural Networks (ANNs) or the so-called Multi-Layer Percept...
Deep Neural Networks (DNNs) have been shaking the AI scene, for their ability to excel at Machine Le...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...