Achieving an Optimal Decision for the Joint Planning of Renewable Power Supply and Energy Storage for Offshore Oil-Gas Platforms

Changbin Hu, Jufu Deng, Chao Liu,Shanna Luo, Xuecheng Li,Heng Lu

APPLIED SCIENCES-BASEL(2023)

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摘要
To address the complexity of siting and sizing for the renewable energy and energy storage (ES) of offshore oil-gas platforms, as well as to enhance the utilization of renewable energy and to ensure the power-flow stability of offshore oil-gas platforms, this paper proposes a hierarchical clustering-and-planning method for wind turbine (WT)/photovoltaic (PV) ES. The proposed strategy consists of three stages. First, the WT/PV power generation is forecast by a LightGBM model. The WT/PV siting and sizing at each node of the distribution network is optimized with a particle swarm optimization (PSO) algorithm, with the objectives of economy and stability. In the second stage, the distribution network is partitioned into sub-clusters, based on a voltage and loss-sensitivity index. Finally, the ES siting and sizing is optimized with PSO to minimize the line loss and the voltage fluctuation for each sub-cluster. The relationship between the economic and stability indicators is conducted quantitatively in the joint-planning approach. Considering the 10 kV distribution network of an oil-gas platform in the Bohai Sea of China as an example, our experiments demonstrated that by adjusting the WT/PV ES capacity for different gas-turbine power outputs, line losses can be reduced by 55-66% and voltage fluctuations can be reduced by 30.4-47.5%.
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关键词
siting and sizing, cluster division, sensitivity index, PSO, offshore oil-gas platforms
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