JOURNAL ARTICLE

Fast Data-Driven Chance Constrained AC-OPF Using Hybrid Sparse Gaussian Processes

Abstract

The alternating current (AC) chance-constrained optimal power flow (CC-OPF) problem addresses the economic efficiency of electricity generation and delivery under generation uncertainty. The latter is intrinsic to modern power grids because of the high amount of renewables. Despite its academic success, the AC CC-OPF problem is highly nonlinear and computationally demanding, which limits its practical impact. For improving the AC-OPF problem complexity/accuracy trade-off, 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 that show up to two times speed-up and more accurate solutions over state-of-the-art methods.

Keywords:
Power flow Computer science Gaussian Mathematical optimization Nonlinear system Electricity Electricity generation AC power Electric power system Flow (mathematics) Power (physics) Renewable energy Mathematics Engineering

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Topics

Gaussian Processes and Bayesian Inference
Physical Sciences →  Computer Science →  Artificial Intelligence
Probabilistic and Robust Engineering Design
Social Sciences →  Decision Sciences →  Statistics, Probability and Uncertainty
Energy Load and Power Forecasting
Physical Sciences →  Engineering →  Electrical and Electronic Engineering

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