2019 IEEE International Conference on Communications, Control, and Computing Technologies for Smart Grids (SmartGridComm) 2019
DOI: 10.1109/smartgridcomm.2019.8909795
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DeepOPF: Deep Neural Network for DC Optimal Power Flow

Abstract: We develop DeepOPF as a Deep Neural Network (DNN) approach for solving security-constrained direct current optimal power flow (SC-DCOPF) problems, which are critical for reliable and cost-effective power system operation. DeepOPF is inspired by the observation that solving the SC-DCOPF problem for a given power network is equivalent to depicting a highdimensional mapping between load inputs and generation and phase-angle outputs. We first construct and train a DNN to learn the mapping between the load inputs a… Show more

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Cited by 88 publications
(103 citation statements)
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References 41 publications
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“…More recently, several papers proposed to exploit Deep Learning (DL) for this purpose. Pan et al [153] use deep learning to predict the decision of a DC-OPF while in [154], [155] the authors predict the decision of an AC-OPF. In all these papers a post-processing method ensuring the feasibility of the solution is described.…”
Section: B Prediction Of Optimal Power Flow Features and Outcomesmentioning
confidence: 99%
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“…More recently, several papers proposed to exploit Deep Learning (DL) for this purpose. Pan et al [153] use deep learning to predict the decision of a DC-OPF while in [154], [155] the authors predict the decision of an AC-OPF. In all these papers a post-processing method ensuring the feasibility of the solution is described.…”
Section: B Prediction Of Optimal Power Flow Features and Outcomesmentioning
confidence: 99%
“…In all these papers a post-processing method ensuring the feasibility of the solution is described. In [153], if the predicted solution is not feasible, the authors solve an optimisation problem to find the feasible solution closest to the predicted one. In [155], the output of the DL model is constrained with a sigmoid function to adhere to active power generation and voltage magnitude constraints and a power flow problem is then solved based on the predictions.…”
Section: B Prediction Of Optimal Power Flow Features and Outcomesmentioning
confidence: 99%
“…Two other important concepts of RL are state-value and action-value functions as defined in (9) and (10), respectively.…”
Section: B Drl Basismentioning
confidence: 99%
“…In [9], a graph neural network (NN) has been applied to approximate the solutions of PF solvers. Deep NNs (DNN) are similarly utilized to solve the DC OPF [10], [11] and AC OPF problems [12], [13]. A commonality among all these methods is that they primarily depend on supervised learning techniques to train the NNs while using massive simulations that must be obtained ahead of time for approximating optimal solutions.…”
Section: Introductionmentioning
confidence: 99%
“…As such, it is a challenging task to obtain general real-time ACOPF solutions from existing algorithms. Therefore, ACOPF solutions with DNN (Deep Neural Network) and DRL (Deep Reinforcement Learning) were introduced to speed up the calculation process [6], [7], [8]. It has been noted that DNN and DRL approaches can solve the ACOPF problem of complex, larger dimensions, and continuous state space.…”
Section: Introductionmentioning
confidence: 99%