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Journal ArticleDOI

Distributionally Robust Chance Constrained Optimal Power Flow with Renewables: A Conic Reformulation

Weijun Xie, +1 more
- 01 Mar 2018 - 
- Vol. 33, Iss: 2, pp 1860-1867
TLDR
In this article, the authors proposed a data driven distributionally robust chance constrained optimal power flow model (DRCC-OPF), which ensures that the worst-case probability of violating both the upper and lower limit of a line/bus capacity under a wide family of distributions is small.
Abstract
The uncertainty associated with renewable energy sources introduces significant challenges in optimal power flow (OPF) analysis. A variety of new approaches have been proposed that use chance constraints to limit line or bus overload risk in OPF models. Most existing formulations assume that the probability distributions associated with the uncertainty are known a priori or can be estimated accurately from empirical data, and/or use separate chance constraints for upper and lower line/bus limits. In this paper, we propose a data driven distributionally robust chance constrained optimal power flow model (DRCC-OPF), which ensures that the worst-case probability of violating both the upper and lower limit of a line/bus capacity under a wide family of distributions is small. Assuming that we can estimate the first and second moments of the underlying distributions based on empirical data, we propose an exact reformulation of DRCC-OPF as a tractable convex program. The key theoretical result behind this reformulation is a second-order cone programming (SOCP) reformulation of a general two-sided distributionally robust chance constrained set by lifting the set to a higher dimensional space. Our numerical study shows that the proposed SOCP formulation can be solved efficiently and that the results of our model are quite robust.

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Citations
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Journal ArticleDOI

Optimization under uncertainty in the era of big data and deep learning: When machine learning meets mathematical programming

TL;DR: This paper identifies fertile avenues for future research that focuses on a closed-loop data-driven optimization framework, which allows the feedback from mathematical programming to machine learning, as well as scenario-based optimization leveraging the power of deep learning techniques.
Journal ArticleDOI

Distributionally Robust Chance-Constrained Approximate AC-OPF With Wasserstein Metric

TL;DR: In this paper, a distributionally robust chance constrained approximate ac-OPF is proposed for variable renewable energy (VRE) uncertainties, where the ambiguity set is constructed from historical data without any presumption on the type of the probability distribution, and more data leads to smaller ambiguity set and less conservative strategy.
Journal ArticleDOI

Distributionally Robust Chance-Constrained Energy Management for Islanded Microgrids

TL;DR: A chance-constrained energy management model for an islanded microgrid, which includes distributed generators, energy storage system, and renewable generation, such as wind power, is developed and results indicate that it is effective and reliable.
Journal ArticleDOI

Data-Driven Adaptive Robust Unit Commitment Under Wind Power Uncertainty: A Bayesian Nonparametric Approach

TL;DR: Computational results show that the proposed approach scales gracefully with problem size and generates solutions that are more cost effective than the existing data-driven ARO method.
Journal ArticleDOI

On distributionally robust chance constrained programs with Wasserstein distance

TL;DR: In this article, a distributionally robust chance constrained program (DRCCP) with Wasserstein ambiguity set is studied, where the uncertain constraints should be satisfied with a probability at least a given threshold for all the probability distributions of the uncertain parameters within a chosen WASSERstein distance from an empirical distribution.
References
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Journal ArticleDOI

MATPOWER: Steady-State Operations, Planning, and Analysis Tools for Power Systems Research and Education

TL;DR: The details of the network modeling and problem formulations used by MATPOWER, including its extensible OPF architecture, are presented, which are used internally to implement several extensions to the standard OPF problem, including piece-wise linear cost functions, dispatchable loads, generator capability curves, and branch angle difference limits.
Book

Probability: Theory and Examples

TL;DR: In this paper, a comprehensive introduction to probability theory covering laws of large numbers, central limit theorem, random walks, martingales, Markov chains, ergodic theorems, and Brownian motion is presented.
Book

Lectures on Stochastic Programming: Modeling and Theory

TL;DR: The authors dedicate this book to Julia, Benjamin, Daniel, Natan and Yael; to Tsonka, Konstatin and Marek; and to the Memory of Feliks, Maria, and Dentcho.
Book

Perturbation Analysis of Optimization Problems

TL;DR: It is shown here how the model derived recently in [Bouchut-Boyaval, M3AS (23) 2013] can be modified for flows on rugous topographies varying around an inclined plane.
Journal ArticleDOI

Distributionally Robust Optimization Under Moment Uncertainty with Application to Data-Driven Problems

TL;DR: This paper proposes a model that describes uncertainty in both the distribution form (discrete, Gaussian, exponential, etc.) and moments (mean and covariance matrix) and demonstrates that for a wide range of cost functions the associated distributionally robust stochastic program can be solved efficiently.
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