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Open AccessJournal ArticleDOI

Probabilistic Power Flow Calculation Using Non-Intrusive Low-Rank Approximation Method

Hao Sheng, +1 more
- 30 Jan 2019 - 
- Vol. 34, Iss: 4, pp 3014-3025
TLDR
In this paper, a probabilistic power flow analysis method based on low-rank approximation (LRA) is proposed, which can accurately and efficiently estimate the Probabilistic characteristics (e.g., mean, variance, and probability density function) of the PPF solutions.
Abstract
In this paper, a novel non-intrusive probabilistic power flow (PPF) analysis method based on the low-rank approximation (LRA) is proposed, which can accurately and efficiently estimate the probabilistic characteristics (e.g., mean, variance, and probability density function) of the PPF solutions. This method aims at building up a statistically-equivalent surrogate for the PPF solutions through a small number of power flow evaluations. By exploiting the retained tensor-product form of the univariate polynomial basis, a sequential correction-updating scheme is applied, making the total number of unknowns to be linear rather than exponential to the number of random inputs. Consequently, the LRA method is particularly promising for dealing with high-dimensional problems with a large number of random inputs. Numerical studies on the IEEE 39-bus, 118-bus, and 1354-bus systems show that the proposed method can achieve accurate probabilistic characteristics of the PPF solutions with much less computational effort compared to the Monte Carlo simulations. Even compared to the polynomial chaos expansion method, the LRA method can achieve comparable accuracy, while the LRA method is more capable of handling higher-dimensional problems. Moreover, numerical results reveal that the randomness brought about by the renewable energy resources and loads may inevitably affect the feasibility of dispatch/planning schemes.

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Citations
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Journal ArticleDOI

A Data-Driven Nonparametric Approach for Probabilistic Load-Margin Assessment Considering Wind Power Penetration

TL;DR: A cost-effective, data-driven approach to assessing a power system's load margin probabilistically, using a nonparametric, Gaussian-process-emulator-based reduced-order model to replace the original complicated continuation power-flow model through a Bayesian-learning framework.
Journal ArticleDOI

Uncertainty handling techniques in power systems: A critical review

TL;DR: In this article, a complete review of uncertainty categorization and several techniques to address the uncertainty in power systems, along with the merits and weaknesses of each technique are presented, and challenges have been highlighted for future research directions.
Journal ArticleDOI

Uncertainty handling techniques in power systems: A critical review

TL;DR: In this article , the authors present an extensive review of uncertainty classification and different uncertainty handling approaches in power systems along with the pros and cons of each method, including probabilistic power flow (PPF), analytical methods (AMs), and approximate methods (APMs).
Journal ArticleDOI

A Data-Driven Sparse Polynomial Chaos Expansion Method to Assess Probabilistic Total Transfer Capability for Power Systems With Renewables

TL;DR: In this article, a data-driven sparse polynomial chaos expansion (DDSPCE) method is proposed for estimating the probabilistic characteristics (e.g., mean, variance, probability distribution) of a PTTC.
Posted Content

A Data-Driven Sparse Polynomial Chaos Expansion Method to Assess Probabilistic Total Transfer Capability for Power Systems with Renewables

TL;DR: Numerical studies on the modified IEEE 118-bus system demonstrate that the proposed DDSPCE method can achieve accurate estimation for the probabilistic characteristics of PTTC with a high efficiency and reveal the great significance of incorporating discrete random inputs in PTTC and ATC assessment.
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