SPLGSYMLJun 24, 2019

Fast Calculation of Probabilistic Optimal Power Flow: A Deep Learning Approach

arXiv:1906.09951v17 citations
Originality Incremental advance
AI Analysis

This addresses a bottleneck for practical power system operation, offering a domain-specific incremental improvement.

The paper tackles the high computational burden of probabilistic optimal power flow (POPF) in power systems by developing a deep learning approach using stacked denoising autoencoders, achieving efficient and accurate calculations without optimization.

Probabilistic optimal power flow (POPF) is an important analytical tool to ensure the secure and economic operation of power systems. POPF needs to solve enormous nonlinear and nonconvex optimization problems. The huge computational burden has become the major bottleneck for the practical application. This paper presents a deep learning approach to solve the POPF problem efficiently and accurately. Taking advantage of the deep structure and reconstructive strategy of stacked denoising auto encoders (SDAE), a SDAE-based optimal power flow (OPF) is developed to extract the high-level nonlinear correlations between the system operating condition and the OPF solution. A training process is designed to learn the feature of POPF. The trained SDAE network can be utilized to conveniently calculate the OPF solution of random samples generated by Monte-Carlo simulation (MCS) without the need of optimization. A modified IEEE 118-bus power system is simulated to demonstrate the effectiveness of the proposed method.

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