DeepOPF: A Feasibility-Optimized Deep Neural Network Approach for AC Optimal Power Flow Problems
Xiang Pan, Minghua Chen, Tianyu Zhao, and Steven H. Low

TL;DR
DeepOPF employs a specialized deep neural network to solve AC optimal power flow problems rapidly, ensuring physical constraints are met, with theoretical guarantees and significant speed improvements over traditional methods.
Contribution
The paper introduces a DNN-based approach that preserves physical constraints and provides theoretical bounds, achieving faster solutions for AC-OPF problems compared to existing solvers.
Findings
Speeds up AC-OPF solving by up to 100 times.
Maintains less than 0.1% cost difference from traditional methods.
Validates effectiveness on large-scale test cases.
Abstract
High percentage penetrations of renewable energy generations introduce significant uncertainty into power systems. It requires grid operators to solve alternative current optimal power flow (AC-OPF) problems more frequently for economical and reliable operation in both transmission and distribution grids. In this paper, 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. A key difficulty for applying machine learning techniques for solving AC-OPF problems lies in ensuring that the obtained solutions respect the equality and inequality physical and operational constraints. Generalized the 2-stage procedure in [1], [2], DeepOPF first trains a DNN model to predict a set of independent operating variables and then directly compute the remaining dependable ones by solving power flow equations.…
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Taxonomy
TopicsPower System Optimization and Stability · Optimal Power Flow Distribution · Energy Load and Power Forecasting
