Tractable Data Enriched Distributionally Robust Chance-Constrained CVR
Qianzhi Zhang, Fankun Bu, Yi Guo, Zhaoyu Wang

TL;DR
This paper introduces a less conservative, data-enriched distributionally robust chance-constrained method for conservation voltage reduction in unbalanced distribution systems, effectively managing uncertainties from renewable energy sources.
Contribution
It develops a tractable DRCC-CVR model with a novel data enrichment approach using GPR and MC to improve uncertainty modeling with limited data.
Findings
The proposed method effectively reduces voltage regulation conservativeness.
Data enrichment improves uncertainty estimation accuracy.
Validated on a real distribution feeder in the Midwest U.S.
Abstract
This paper proposes a tractable distributionally robust chance-constrained conservation voltage reduction (DRCC-CVR) method with enriched data-based ambiguity set in unbalanced three-phase distribution systems. The increasing penetration of distributed renewable energy not only brings clean power but also challenges the voltage regulation and energy-saving performance of CVR by introducing high uncertainties to distribution systems. In most cases, the conventional robust optimization methods for CVR only provide conservative solutions. To better consider the impacts of load and PV generation uncertainties on CVR implementation in distribution systems and provide less conservative solutions, this paper develops a data-based DRCC-CVR model with tractable reformulation and data enrichment method. Even though the uncertainties of load and photovoltaic (PV) can be captured by data, the…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Electric Power System Optimization · Smart Grid Energy Management
MethodsGaussian Process
