Energies, Vol. 19, Pages 389: Distributionally Robust Optimization-Based Planning of an AC-Integrated Wind–Photovoltaic–Hydro–Storage Bundled Transmission System Considering Wind–Photovoltaic Uncertainty and Correlation

Energies, Vol. 19, Pages 389: Distributionally Robust Optimization-Based Planning of an AC-Integrated Wind–Photovoltaic–Hydro–Storage Bundled Transmission System Considering Wind–Photovoltaic Uncertainty and Correlation

Energies doi: 10.3390/en19020389

Authors:
Tu Feng
Xin Liao
Lili Mo

This paper investigates the planning problem of AC-integrated wind–photovoltaic–hydro–storage (WPHS) bundled transmission systems. To effectively capture the uncertainty and interdependence in renewable power outputs, a Copula-enhanced distributionally robust optimization (DRO) framework is developed, enabling a unified treatment of stochastic and correlated renewable generation within the system planning process. First, a location and capacity planning model based on DRO for WPHS generation bases is formulated, in which a composite-norm ambiguity set is constructed to describe the uncertainty of renewable resources. Second, the Copula function is employed to characterize the nonlinear dependence structure between wind and photovoltaic (PV) power outputs, providing representative scenarios and initial probability distribution (PD) support for the construction of a bivariate ambiguity set that embeds coupling information. The resulting optimization problem is solved using the column and constraint generation (C&CG) algorithm. In addition, an evaluation metric termed the transmission corridor utilization rate (TCUR) is proposed to quantitatively assess the efficiency of external AC transmission planning schemes, offering a new perspective for the evaluation of regional power transmission strategies. Finally, simulation results validate that the proposed model achieves superior performance in terms of system economic efficiency and TCUR.

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