4.7 Article

Parametric Distribution Optimal Power Flow With Variable Renewable Generation

Journal

IEEE TRANSACTIONS ON POWER SYSTEMS
Volume 37, Issue 3, Pages 1831-1841

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TPWRS.2021.3110528

Keywords

Renewable energy sources; Real-time systems; Generators; Distribution networks; Optimization; Wind forecasting; Uncertainty; Distribution system; multi-parametric programming; real-time optimal power flow; renewable generation

Funding

  1. National Natural Science Foundation of China [U1766203, 51807101]
  2. Tsinghua-UNSW joint research Grant

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This paper aims to study the mapping relationship between the output of renewable energy and the optimal power flow solutions. By proposing the parametric distribution optimal power flow (P-DOPF) method, renewable energy output is treated as parameters to establish a multi-parametric linear programming model. By designing an adaptive-sampling algorithm, the optimal value and optimal solution functions are constructed, providing an explicit real-time control policy.
The output of renewable generation depends on the real-time weather conditions and changes rapidly; so the economic operating point of the power system varies over time. This paper aims to find the explicit mapping from variable renewable power to optimal power flow solutions. To this end, we propose a parametric distribution optimal power flow (P-DOPF) method, which gives the optimal dispatch strategy and power flow status as analytical functions of the renewable output. With the established distribution optimal power flow problem based on the relaxed Distflow model, the first step is to perform a global polyhedral approximation on the second-order cone constraints to develop a linearized formulation. The second step is to obtain the P-DOPF model by treating renewable power output as parameters; then, the P-DOPF problem gives rise to a multi-parametric linear program (mp-LP). Third, we prove that the optimal solution and optimal value of the P-DOPF are piecewise linear functions of the parameters and we design an adaptive-sampling algorithm to construct the optimal value and optimal solution functions, as well as the partition of the parameter set, subject to a given error tolerance; this algorithm is not influenced by model degeneracy, a common difficulty of existing mp-LP algorithms. The P-DOPF framework provides an explicit real-time control policy of generators in response to the renewable output. Case studies on the IEEE 33 and 69-bus systems verify the effectiveness and performance of the proposed method; by comparison, the proposed method outperforms the established affine policy method in computational efficiency and optimality by 24.5% and 4.62%, respectively.

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