LGSPSYJan 10, 2023

Optimal Power Flow Based on Physical-Model-Integrated Neural Network with Worth-Learning Data Generation

arXiv:2301.03766v110 citationsh-index: 38
Originality Incremental advance
AI Analysis

This addresses reliability issues in power grid optimization for energy systems, but it is incremental as it builds on existing neural network solvers with a data enhancement approach.

The authors tackled the problem of unreliable neural network solvers for optimal power flow due to unrepresentative training data by proposing a physical-model-integrated neural network with worth-learning data generation, resulting in over 50% reduction in constraint violations and optimality loss compared to conventional methods.

Fast and reliable solvers for optimal power flow (OPF) problems are attracting surging research interest. As surrogates of physical-model-based OPF solvers, neural network (NN) solvers can accelerate the solving process. However, they may be unreliable for ``unseen" inputs when the training dataset is unrepresentative. Enhancing the representativeness of the training dataset for NN solvers is indispensable but is not well studied in the literature. To tackle this challenge, we propose an OPF solver based on a physical-model-integrated NN with worth-learning data generation. The designed NN is a combination of a conventional multi-layer perceptron (MLP) and an OPF-model module, which outputs not only the optimal decision variables of the OPF problem but also the constraints violation degree. Based on this NN, the worth-learning data generation method can identify feasible samples that are not well generalized by the NN. By iteratively applying this method and including the newly identified worth-learning samples in the training set, the representativeness of the training set can be significantly enhanced. Therefore, the solution reliability of the NN solver can be remarkably improved. Experimental results show that the proposed method leads to an over 50% reduction of constraint violations and optimality loss compared to conventional NN solvers.

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