High-Fidelity Machine Learning Approximations of Large-Scale Optimal
Power Flow
- URL: http://arxiv.org/abs/2006.16356v1
- Date: Mon, 29 Jun 2020 20:22:16 GMT
- Title: High-Fidelity Machine Learning Approximations of Large-Scale Optimal
Power Flow
- Authors: Minas Chatzos and Ferdinando Fioretto and Terrence W.K. Mak and Pascal
Van Hentenryck
- Abstract summary: AC-OPF is a key building block in many power system applications.
Motivated by increased penetration of renewable sources, this paper explores deep learning to deliver efficient approximations to the AC-OPF.
- Score: 49.2540510330407
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The AC Optimal Power Flow (AC-OPF) is a key building block in many power
system applications. It determines generator setpoints at minimal cost that
meet the power demands while satisfying the underlying physical and operational
constraints. It is non-convex and NP-hard, and computationally challenging for
large-scale power systems. Motivated by the increased stochasticity in
generation schedules and increasing penetration of renewable sources, this
paper explores a deep learning approach to deliver highly efficient and
accurate approximations to the AC-OPF. In particular, the paper proposes an
integration of deep neural networks and Lagrangian duality to capture the
physical and operational constraints. The resulting model, called OPF-DNN, is
evaluated on real case studies from the French transmission system, with up to
3,400 buses and 4,500 lines. Computational results show that OPF-DNN produces
highly accurate AC-OPF approximations whose costs are within 0.01% of
optimality. OPF-DNN generates, in milliseconds, solutions that capture the
problem constraints with high fidelity.
Related papers
- QCQP-Net: Reliably Learning Feasible Alternating Current Optimal Power
Flow Solutions Under Constraints [4.1920378271058425]
We propose an innovated computational learning ACOPF, where the input is mapped to the ACOPF network in a computationally efficient manner.
We show through simulations that our proposed method achieves superior feasibility rate and cost in situations where the existing-based approaches fail.
arXiv Detail & Related papers (2024-01-11T20:17:44Z) - GP CC-OPF: Gaussian Process based optimization tool for
Chance-Constrained Optimal Power Flow [54.94701604030199]
The Gaussian Process (GP) based Chance-Constrained Optimal Flow (CC-OPF) is an open-source Python code for economic dispatch (ED) problem in power grids.
The developed tool presents a novel data-driven approach based on the CC-OP model for solving the large regression problem with a trade-off between complexity and accuracy.
arXiv Detail & Related papers (2023-02-16T17:59:06Z) - Unsupervised Deep Learning for AC Optimal Power Flow via Lagrangian
Duality [3.412750324146571]
AC optimal power flow is a fundamental optimization problem in power system analysis.
Deep learning based approaches have gained intensive attention to conduct the time-consuming training process offline.
This paper proposes an end-to-end unsupervised learning based framework for AC-OPF.
arXiv Detail & Related papers (2022-12-07T22:26:45Z) - Data-Driven Chance Constrained AC-OPF using Hybrid Sparse Gaussian
Processes [57.70237375696411]
The paper proposes a fast data-driven setup that uses the sparse and hybrid Gaussian processes (GP) framework to model the power flow equations with input uncertainty.
We advocate the efficiency of the proposed approach by a numerical study over multiple IEEE test cases showing up to two times faster and more accurate solutions.
arXiv Detail & Related papers (2022-08-30T09:27:59Z) - Data-Driven Stochastic AC-OPF using Gaussian Processes [54.94701604030199]
Integrating a significant amount of renewables into a power grid is probably the most a way to reduce carbon emissions from power grids slow down climate change.
This paper presents an alternative data-driven approach based on the AC power flow equations that can incorporate uncertainty inputs.
The GP approach learns a simple yet non-constrained data-driven approach to close this gap to the AC power flow equations.
arXiv Detail & Related papers (2022-07-21T23:02:35Z) - Physics-Informed Neural Networks for AC Optimal Power Flow [0.0]
This paper introduces, for the first time, physics-informed neural networks to accurately estimate the AC-OPF result.
We show how physics-informed neural networks achieve higher accuracy and lower constraint violations than standard neural networks.
arXiv Detail & Related papers (2021-10-06T11:44:59Z) - Learning to Solve the AC-OPF using Sensitivity-Informed Deep Neural
Networks [52.32646357164739]
We propose a deep neural network (DNN) to solve the solutions of the optimal power flow (ACOPF)
The proposed SIDNN is compatible with a broad range of OPF schemes.
It can be seamlessly integrated in other learning-to-OPF schemes.
arXiv Detail & Related papers (2021-03-27T00:45:23Z) - A Meta-Learning Approach to the Optimal Power Flow Problem Under
Topology Reconfigurations [69.73803123972297]
We propose a DNN-based OPF predictor that is trained using a meta-learning (MTL) approach.
The developed OPF-predictor is validated through simulations using benchmark IEEE bus systems.
arXiv Detail & Related papers (2020-12-21T17:39:51Z) - DeepOPF: A Feasibility-Optimized Deep Neural Network Approach for AC
Optimal Power Flow Problems [25.791128241015684]
We develop a Deep Neural Network (DNN) approach, called DeepOPF, for solving AC-OPF problems in a fraction of the time used by conventional solvers.
We show that DeepOPF speeds up the computing time by up to two orders of magnitude as compared to a state-of-the-art solver.
arXiv Detail & Related papers (2020-07-02T10:26:46Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.